AI-TensorFlow-Libtensorflow
view release on metacpan or search on metacpan
lib/AI/TensorFlow/Libtensorflow/Manual/Notebook/InferenceUsingTFHubMobileNetV2Model.pod view on Meta::CPAN
# PODNAME: AI::TensorFlow::Libtensorflow::Manual::Notebook::InferenceUsingTFHubMobileNetV2Model
## DO NOT EDIT. Generated from notebook/InferenceUsingTFHubMobileNetV2Model.ipynb using ./maint/process-notebook.pl.
use strict;
use warnings;
use utf8;
use constant IN_IPERL => !! $ENV{PERL_IPERL_RUNNING};
no if IN_IPERL, warnings => 'redefine'; # fewer messages when re-running cells
use feature qw(say state);
use Syntax::Construct qw(each-array);
use lib::projectroot qw(lib);
BEGIN {
if( IN_IPERL ) {
$ENV{TF_CPP_MIN_LOG_LEVEL} = 3;
}
require AI::TensorFlow::Libtensorflow;
}
use URI ();
use HTTP::Tiny ();
use Path::Tiny qw(path);
use File::Which ();
use List::Util ();
use Data::Printer ( output => 'stderr', return_value => 'void', filters => ['PDL'] );
use Data::Printer::Filter::PDL ();
use Text::Table::Tiny qw(generate_table);
use Imager;
my $s = AI::TensorFlow::Libtensorflow::Status->New;
sub AssertOK {
die "Status $_[0]: " . $_[0]->Message
unless $_[0]->GetCode == AI::TensorFlow::Libtensorflow::Status::OK;
return;
}
AssertOK($s);
use PDL;
use AI::TensorFlow::Libtensorflow::DataType qw(FLOAT);
use FFI::Platypus::Memory qw(memcpy);
use FFI::Platypus::Buffer qw(scalar_to_pointer);
sub FloatPDLTOTFTensor {
my ($p) = @_;
return AI::TensorFlow::Libtensorflow::Tensor->New(
FLOAT, [ reverse $p->dims ], $p->get_dataref, sub { undef $p }
);
}
sub FloatTFTensorToPDL {
my ($t) = @_;
my $pdl = zeros(float,reverse( map $t->Dim($_), 0..$t->NumDims-1 ) );
memcpy scalar_to_pointer( ${$pdl->get_dataref} ),
scalar_to_pointer( ${$t->Data} ),
$t->ByteSize;
$pdl->upd_data;
$pdl;
}
use HTML::Tiny;
sub my_table {
my ($data, $cb) = @_;
my $h = HTML::Tiny->new;
$h->table( { style => 'width: 100%' },
[
$h->tr(
map {
[
$h->td( $cb->($_, $h) )
]
} @$data
)
]
)
}
sub show_in_gnuplot {
my ($p) = @_;
require PDL::Graphics::Gnuplot;
PDL::Graphics::Gnuplot::image( square => 1, $p );
}
# image_size => [width, height] (but usually square images)
my %model_name_to_params = (
mobilenet_v2_100_224 => {
handle => 'https://tfhub.dev/google/imagenet/mobilenet_v2_100_224/classification/5',
image_size => [ 224, 224 ],
},
mobilenet_v2_140_224 => {
handle => "https://tfhub.dev/google/imagenet/mobilenet_v2_140_224/classification/5",
image_size => [ 224, 224 ],
},
);
my $model_name = 'mobilenet_v2_100_224';
say "Selected model: $model_name : $model_name_to_params{$model_name}{handle}";
my $model_uri = URI->new( $model_name_to_params{$model_name}{handle} );
$model_uri->query_form( 'tf-hub-format' => 'compressed' );
my $model_base = substr( $model_uri->path, 1 ) =~ s,/,_,gr;
my $model_archive_path = "${model_base}.tar.gz";
use constant IMAGENET_LABEL_COUNT_WITH_BG => 1001;
my $labels_uri = URI->new('https://storage.googleapis.com/download.tensorflow.org/data/ImageNetLabels.txt');
my $labels_path = ($labels_uri->path_segments)[-1];
my $http = HTTP::Tiny->new;
for my $download ( [ $model_uri => $model_archive_path ],
[ $labels_uri => $labels_path ]) {
my ($uri, $path) = @$download;
say "Downloading $uri to $path";
next if -e $path;
$http->mirror( $uri, $path );
}
use Archive::Extract;
my $ae = Archive::Extract->new( archive => $model_archive_path );
die "Could not extract archive" unless $ae->extract( to => $model_base );
my $saved_model = path($model_base)->child('saved_model.pb');
say "Saved model is in $saved_model" if -f $saved_model;
my @labels = path($labels_path)->lines( { chomp => 1 });
die "Labels should have @{[ IMAGENET_LABEL_COUNT_WITH_BG ]} items"
unless @labels == IMAGENET_LABEL_COUNT_WITH_BG;
say "Got labels: ", join( ", ", List::Util::head(5, @labels) ), ", etc.";
my @tags = ( 'serve' );
if( File::Which::which('saved_model_cli')) {
local $ENV{TF_CPP_MIN_LOG_LEVEL} = 3; # quiet the TensorFlow logger for the following command
system(qw(saved_model_cli show),
qw(--dir) => $model_base,
qw(--tag_set) => join(',', @tags),
qw(--signature_def) => 'serving_default'
) == 0 or die "Could not run saved_model_cli";
} else {
say "Install the tensorflow Python package to get the `saved_model_cli` command.";
}
my $opt = AI::TensorFlow::Libtensorflow::SessionOptions->New;
my $graph = AI::TensorFlow::Libtensorflow::Graph->New;
my $session = AI::TensorFlow::Libtensorflow::Session->LoadFromSavedModel(
$opt, undef, $model_base, \@tags, $graph, undef, $s
);
AssertOK($s);
my %ops = (
in => $graph->OperationByName('serving_default_inputs'),
out => $graph->OperationByName('StatefulPartitionedCall'),
);
die "Could not get all operations" unless List::Util::all(sub { defined }, values %ops);
my %outputs = map { $_ => [ AI::TensorFlow::Libtensorflow::Output->New( { oper => $ops{$_}, index => 0 } ) ] }
keys %ops;
p %outputs;
say "Input: " , $outputs{in}[0];
say "Output: ", $outputs{out}[0];
lib/AI/TensorFlow/Libtensorflow/Manual/Notebook/InferenceUsingTFHubMobileNetV2Model.pod view on Meta::CPAN
#by Merdal, CC BY-SA 3.0 <http://creativecommons.org/licenses/by-sa/3.0/>, via Wikimedia Commons
"teapot" => "https://upload.wikimedia.org/wikipedia/commons/4/44/Black_tea_pot_cropped.jpg",
#by Mendhak, CC BY-SA 2.0 <https://creativecommons.org/licenses/by-sa/2.0>, via Wikimedia Commons
);
my @image_names = sort keys %images_for_test_to_uri;
if( IN_IPERL ) {
IPerl->html(
my_table( \@image_names, sub {
my ($image_name, $h) = @_;
(
$h->tt($image_name),
$h->a( { href => $images_for_test_to_uri{$image_name} },
$h->img({
src => $images_for_test_to_uri{$image_name},
alt => $image_name,
width => '50%',
})
),
)
})
);
}
sub imager_paste_center_pad {
my ($inner, $padded_sz, @rest) = @_;
my $outer = Imager->new( List::Util::mesh( [qw(xsize ysize)], $padded_sz ),
@rest
);
$outer->paste(
left => int( ($outer->getwidth - $inner->getwidth ) / 2 ),
top => int( ($outer->getheight - $inner->getheight) / 2 ),
src => $inner,
);
$outer;
}
sub imager_scale_to {
my ($img, $image_size) = @_;
my $rescaled = $img->scale(
List::Util::mesh( [qw(xpixels ypixels)], $image_size ),
type => 'min',
qtype => 'mixing', # 'mixing' seems to work better than 'normal'
);
}
sub load_image_to_pdl {
my ($uri, $image_size) = @_;
my $http = HTTP::Tiny->new;
my $response = $http->get( $uri );
die "Could not fetch image from $uri" unless $response->{success};
say "Downloaded $uri";
my $img = Imager->new;
$img->read( data => $response->{content} );
my $rescaled = imager_scale_to($img, $image_size);
say sprintf "Rescaled image from [ %d x %d ] to [ %d x %d ]",
$img->getwidth, $img->getheight,
$rescaled->getwidth, $rescaled->getheight;
my $padded = imager_paste_center_pad($rescaled, $image_size,
# ARGB fits in 32-bits (uint32_t)
channels => 4
);
say sprintf "Padded to [ %d x %d ]", $padded->getwidth, $padded->getheight;
# Create PDL ndarray from Imager data in-memory.
my $data;
$padded->write( data => \$data, type => 'raw' )
or die "could not write ". $padded->errstr;
# $data is packed as PDL->dims == [w,h] with ARGB pixels
# $ PDL::howbig(ulong) # 4
my $pdl_raw = zeros(ulong, $padded->getwidth, $padded->getheight);
${ $pdl_raw->get_dataref } = $data;
$pdl_raw->upd_data;
# Split uint32_t pixels into first dimension with 3 channels (R,G,B) with values 0-255.
my @shifts = map 8*$_, 0..2;
my $pdl_channels = $pdl_raw->dummy(0)
->and2(ulong(map 0xFF << $_, @shifts)->slice(':,*,*') )
->shiftright( ulong(@shifts)->slice(':,*,*') )
->byte;
my $pdl_scaled = (
# Scale to [ 0, 1 ].
( $pdl_channels / float(255) )
);
## flip vertically to see image right way up
#show_in_gnuplot( $pdl_channels->slice(':,:,-1:0') ); #DEBUG
#show_in_gnuplot( $pdl_scaled->slice(':,:,-1:0') * 255.0 ); #DEBUG
$pdl_scaled;
}
my @pdl_images = map {
load_image_to_pdl(
$images_for_test_to_uri{$_},
$model_name_to_params{$model_name}{image_size}
);
} @image_names;
my $pdl_image_batched = cat(@pdl_images);
my $t = FloatPDLTOTFTensor($pdl_image_batched);
p $pdl_image_batched;
p $t;
my $RunSession = sub {
my ($session, $t) = @_;
my @outputs_t;
$session->Run(
undef,
$outputs{in}, [$t],
$outputs{out}, \@outputs_t,
undef,
undef,
$s
);
AssertOK($s);
return $outputs_t[0];
};
say "Warming up the model";
use PDL::GSL::RNG;
my $rng = PDL::GSL::RNG->new('default');
my $image_size = $model_name_to_params{$model_name}{image_size};
my $warmup_input = zeros(float, 3, @$image_size, 1 );
$rng->get_uniform($warmup_input);
p $RunSession->($session, FloatPDLTOTFTensor($warmup_input));
my $output_pdl_batched = FloatTFTensorToPDL($RunSession->($session, $t));
lib/AI/TensorFlow/Libtensorflow/Manual/Notebook/InferenceUsingTFHubMobileNetV2Model.pod view on Meta::CPAN
}
$h->table([$h->tr(@tr)])
},
)
})
);
IPerl->display($html);
} else {
for my $batch_idx (0..$#image_names) {
my $image_name = $image_names[$batch_idx];
my @top_for_image = $top_lists[$batch_idx]->list;
my @td;
say "Image name: `$image_name`";
my $header = [ ('Rank', 'Label No', 'Label', 'Prob') ];
my @rows;
while( my ($i, $label_index) = each @top_for_image ) {
my $class_index = $includes_background_class ? $label_index : $label_index + 1;
push @rows, [ (
$i + 1,
$class_index,
$labels[$class_index],
$probabilities_batched->at($label_index,$batch_idx),
) ];
}
say generate_table( rows => [ $header, @rows ], header_row => 1 );
print "\n";
}
}
my $p_approx_batched = $probabilities_batched->sumover->approx(1, 1e-5);
p $p_approx_batched;
say "All probabilities sum up to approximately 1" if $p_approx_batched->all->sclr;
use Filesys::DiskUsage qw/du/;
my $total = du( { 'human-readable' => 1, dereference => 1 },
$model_archive_path, $model_base, $labels_path );
say "Disk space usage: $total"; undef;
my @solid_channel_uris = (
'https://upload.wikimedia.org/wikipedia/commons/thumb/6/62/Solid_red.svg/480px-Solid_red.svg.png',
'https://upload.wikimedia.org/wikipedia/commons/thumb/1/1d/Green_00FF00_9x9.svg/480px-Green_00FF00_9x9.svg.png',
'https://upload.wikimedia.org/wikipedia/commons/thumb/f/ff/Solid_blue.svg/480px-Solid_blue.svg.png',
);
undef;
__END__
=pod
=encoding UTF-8
=head1 NAME
AI::TensorFlow::Libtensorflow::Manual::Notebook::InferenceUsingTFHubMobileNetV2Model - Using TensorFlow to do image classification using a pre-trained model
=head1 SYNOPSIS
The following tutorial is based on the L<Image Classification with TensorFlow Hub notebook|https://github.com/tensorflow/docs/blob/master/site/en/hub/tutorials/image_classification.ipynb>. It uses a pre-trained model based on the I<MobileNet V2> arch...
Please look at the L<SECURITY note|https://github.com/tensorflow/tensorflow/blob/master/SECURITY.md> regarding running models as models are programs. You can also used C<saved_model_cli scan> to check for L<security-sensitive "denylisted ops"|https:/...
If you would like to visualise a model, you can use L<Netron|https://github.com/lutzroeder/netron> on the C<.pb> file.
=head1 COLOPHON
The following document is either a POD file which can additionally be run as a Perl script or a Jupyter Notebook which can be run in L<IPerl|https://p3rl.org/Devel::IPerl> (viewable online at L<nbviewer|https://nbviewer.org/github/EntropyOrg/perl-AI-...
If you are running the code, you may optionally install the L<C<tensorflow> Python package|https://www.tensorflow.org/install/pip> in order to access the C<saved_model_cli> command, but this is only used for informational purposes.
=head1 TUTORIAL
=head2 Load the library
First, we need to load the C<AI::TensorFlow::Libtensorflow> library and more helpers. We then create an C<AI::TensorFlow::Libtensorflow::Status> object and helper function to make sure that the calls to the C<libtensorflow> C library are working prop...
use strict;
use warnings;
use utf8;
use constant IN_IPERL => !! $ENV{PERL_IPERL_RUNNING};
no if IN_IPERL, warnings => 'redefine'; # fewer messages when re-running cells
use feature qw(say state);
use Syntax::Construct qw(each-array);
use lib::projectroot qw(lib);
BEGIN {
if( IN_IPERL ) {
$ENV{TF_CPP_MIN_LOG_LEVEL} = 3;
}
require AI::TensorFlow::Libtensorflow;
}
use URI ();
use HTTP::Tiny ();
use Path::Tiny qw(path);
use File::Which ();
use List::Util ();
use Data::Printer ( output => 'stderr', return_value => 'void', filters => ['PDL'] );
use Data::Printer::Filter::PDL ();
use Text::Table::Tiny qw(generate_table);
use Imager;
my $s = AI::TensorFlow::Libtensorflow::Status->New;
sub AssertOK {
die "Status $_[0]: " . $_[0]->Message
unless $_[0]->GetCode == AI::TensorFlow::Libtensorflow::Status::OK;
return;
}
AssertOK($s);
In this notebook, we will use C<PDL> to store and manipulate the ndarray data before converting it to a C<TFTensor>. The following functions help with copying the data back and forth between the two object types.
An important thing to note about the dimensions used by TensorFlow's TFTensors when compared with PDL is that the dimension lists are reversed. Consider a binary raster image with width W and height H stored in L<row-major format|https://en.wikipedia...
This difference will be explained more concretely further in the tutorial.
Future work will provide an API for more convenient wrappers which will provide an option to either copy or share the same data (if possible).
use PDL;
use AI::TensorFlow::Libtensorflow::DataType qw(FLOAT);
use FFI::Platypus::Memory qw(memcpy);
use FFI::Platypus::Buffer qw(scalar_to_pointer);
sub FloatPDLTOTFTensor {
my ($p) = @_;
return AI::TensorFlow::Libtensorflow::Tensor->New(
FLOAT, [ reverse $p->dims ], $p->get_dataref, sub { undef $p }
);
}
sub FloatTFTensorToPDL {
my ($t) = @_;
my $pdl = zeros(float,reverse( map $t->Dim($_), 0..$t->NumDims-1 ) );
memcpy scalar_to_pointer( ${$pdl->get_dataref} ),
scalar_to_pointer( ${$t->Data} ),
$t->ByteSize;
$pdl->upd_data;
$pdl;
}
The following is just a small helper to generate an HTML C<<< <table> >>> for output in C<IPerl>.
use HTML::Tiny;
sub my_table {
my ($data, $cb) = @_;
my $h = HTML::Tiny->new;
$h->table( { style => 'width: 100%' },
[
$h->tr(
map {
[
$h->td( $cb->($_, $h) )
]
} @$data
)
]
)
}
This is a helper to display images in Gnuplot for debugging, but those debugging lines are commented out.
sub show_in_gnuplot {
my ($p) = @_;
require PDL::Graphics::Gnuplot;
PDL::Graphics::Gnuplot::image( square => 1, $p );
}
=head2 Fetch the model and labels
We are going to use an L<image classification model|https://tfhub.dev/google/imagenet/mobilenet_v2_100_224/classification/5> from TensorFlow Hub based on the MobileNet V2 architecture. We download both the model and ImageNet classification labels.
# image_size => [width, height] (but usually square images)
my %model_name_to_params = (
mobilenet_v2_100_224 => {
handle => 'https://tfhub.dev/google/imagenet/mobilenet_v2_100_224/classification/5',
image_size => [ 224, 224 ],
},
mobilenet_v2_140_224 => {
handle => "https://tfhub.dev/google/imagenet/mobilenet_v2_140_224/classification/5",
image_size => [ 224, 224 ],
},
);
my $model_name = 'mobilenet_v2_100_224';
say "Selected model: $model_name : $model_name_to_params{$model_name}{handle}";
B<STREAM (STDOUT)>:
Selected model: mobilenet_v2_100_224 : https://tfhub.dev/google/imagenet/mobilenet_v2_100_224/classification/5
B<RESULT>:
1
We download the model and labels to the current directory then extract the model to a folder with the name given in C<$model_base>.
my $model_uri = URI->new( $model_name_to_params{$model_name}{handle} );
$model_uri->query_form( 'tf-hub-format' => 'compressed' );
my $model_base = substr( $model_uri->path, 1 ) =~ s,/,_,gr;
my $model_archive_path = "${model_base}.tar.gz";
use constant IMAGENET_LABEL_COUNT_WITH_BG => 1001;
my $labels_uri = URI->new('https://storage.googleapis.com/download.tensorflow.org/data/ImageNetLabels.txt');
my $labels_path = ($labels_uri->path_segments)[-1];
my $http = HTTP::Tiny->new;
for my $download ( [ $model_uri => $model_archive_path ],
[ $labels_uri => $labels_path ]) {
my ($uri, $path) = @$download;
say "Downloading $uri to $path";
next if -e $path;
$http->mirror( $uri, $path );
}
use Archive::Extract;
my $ae = Archive::Extract->new( archive => $model_archive_path );
die "Could not extract archive" unless $ae->extract( to => $model_base );
my $saved_model = path($model_base)->child('saved_model.pb');
say "Saved model is in $saved_model" if -f $saved_model;
my @labels = path($labels_path)->lines( { chomp => 1 });
die "Labels should have @{[ IMAGENET_LABEL_COUNT_WITH_BG ]} items"
unless @labels == IMAGENET_LABEL_COUNT_WITH_BG;
say "Got labels: ", join( ", ", List::Util::head(5, @labels) ), ", etc.";
B<STREAM (STDOUT)>:
Downloading https://tfhub.dev/google/imagenet/mobilenet_v2_100_224/classification/5?tf-hub-format=compressed to google_imagenet_mobilenet_v2_100_224_classification_5.tar.gz
Downloading https://storage.googleapis.com/download.tensorflow.org/data/ImageNetLabels.txt to ImageNetLabels.txt
Saved model is in google_imagenet_mobilenet_v2_100_224_classification_5/saved_model.pb
Got labels: background, tench, goldfish, great white shark, tiger shark, etc.
B<RESULT>:
1
=head2 Load the model and session
We define the tag set C<[ 'serve' ]> which we will use to load the model.
my @tags = ( 'serve' );
B<RESULT>:
serve
We can examine what computations are contained in the graph in terms of the names of the inputs and outputs of an operation found in the graph by running C<saved_model_cli>.
if( File::Which::which('saved_model_cli')) {
local $ENV{TF_CPP_MIN_LOG_LEVEL} = 3; # quiet the TensorFlow logger for the following command
system(qw(saved_model_cli show),
qw(--dir) => $model_base,
qw(--tag_set) => join(',', @tags),
qw(--signature_def) => 'serving_default'
) == 0 or die "Could not run saved_model_cli";
} else {
say "Install the tensorflow Python package to get the `saved_model_cli` command.";
}
B<STREAM (STDOUT)>:
The given SavedModel SignatureDef contains the following input(s):
inputs['inputs'] tensor_info:
dtype: DT_FLOAT
shape: (-1, 224, 224, 3)
name: serving_default_inputs:0
The given SavedModel SignatureDef contains the following output(s):
outputs['logits'] tensor_info:
dtype: DT_FLOAT
shape: (-1, 1001)
name: StatefulPartitionedCall:0
Method name is: tensorflow/serving/predict
B<RESULT>:
1
The above C<saved_model_cli> output shows that the model input is at C<serving_default_inputs:0> which means the operation named C<serving_default_inputs> at index C<0> and the output is at C<StatefulPartitionedCall:0> which means the operation named...
It also shows the type and shape of the C<TFTensor>s for those inputs and outputs. Together this is known as a signature.
For the C<input>, we have C<(-1, 224, 224, 3)> which is a L<common input image specification for TensorFlow Hub|https://www.tensorflow.org/hub/common_signatures/images#input>. This is known as C<channels_last> (or C<NHWC>) layout where the TensorFlow...
For the C<output>, we have C<(-1, 1001)> which is C<[batch_size, num_classes]> where the elements are scores that the image received for that ImageNet class.
Now we can load the model from that folder with the tag set C<[ 'serve' ]> by using the C<LoadFromSavedModel> constructor to create a C<::Graph> and a C<::Session> for that graph.
my $opt = AI::TensorFlow::Libtensorflow::SessionOptions->New;
lib/AI/TensorFlow/Libtensorflow/Manual/Notebook/InferenceUsingTFHubMobileNetV2Model.pod view on Meta::CPAN
</span></code></pre></span>
B<RESULT>:
1
Now we can get the following testing images from Wikimedia.
my %images_for_test_to_uri = (
"tiger" => "https://upload.wikimedia.org/wikipedia/commons/b/b0/Bengal_tiger_%28Panthera_tigris_tigris%29_female_3_crop.jpg",
#by Charles James Sharp, CC BY-SA 4.0 <https://creativecommons.org/licenses/by-sa/4.0>, via Wikimedia Commons
"bus" => "https://upload.wikimedia.org/wikipedia/commons/6/63/LT_471_%28LTZ_1471%29_Arriva_London_New_Routemaster_%2819522859218%29.jpg",
#by Martin49 from London, England, CC BY 2.0 <https://creativecommons.org/licenses/by/2.0>, via Wikimedia Commons
"car" => "https://upload.wikimedia.org/wikipedia/commons/4/49/2013-2016_Toyota_Corolla_%28ZRE172R%29_SX_sedan_%282018-09-17%29_01.jpg",
#by EurovisionNim, CC BY-SA 4.0 <https://creativecommons.org/licenses/by-sa/4.0>, via Wikimedia Commons
"cat" => "https://upload.wikimedia.org/wikipedia/commons/4/4d/Cat_November_2010-1a.jpg",
#by Alvesgaspar, CC BY-SA 3.0 <https://creativecommons.org/licenses/by-sa/3.0>, via Wikimedia Commons
"dog" => "https://upload.wikimedia.org/wikipedia/commons/archive/a/a9/20090914031557%21Saluki_dog_breed.jpg",
#by Craig Pemberton, CC BY-SA 3.0 <https://creativecommons.org/licenses/by-sa/3.0>, via Wikimedia Commons
"apple" => "https://upload.wikimedia.org/wikipedia/commons/1/15/Red_Apple.jpg",
#by Abhijit Tembhekar from Mumbai, India, CC BY 2.0 <https://creativecommons.org/licenses/by/2.0>, via Wikimedia Commons
"banana" => "https://upload.wikimedia.org/wikipedia/commons/1/1c/Bananas_white_background.jpg",
#by fir0002 flagstaffotos [at] gmail.com Canon 20D + Tamron 28-75mm f/2.8, GFDL 1.2 <http://www.gnu.org/licenses/old-licenses/fdl-1.2.html>, via Wikimedia Commons
"turtle" => "https://upload.wikimedia.org/wikipedia/commons/8/80/Turtle_golfina_escobilla_oaxaca_mexico_claudio_giovenzana_2010.jpg",
#by Claudio Giovenzana, CC BY-SA 3.0 <https://creativecommons.org/licenses/by-sa/3.0>, via Wikimedia Commons
"flamingo" => "https://upload.wikimedia.org/wikipedia/commons/b/b8/James_Flamingos_MC.jpg",
#by Christian Mehlführer, User:Chmehl, CC BY 3.0 <https://creativecommons.org/licenses/by/3.0>, via Wikimedia Commons
"piano" => "https://upload.wikimedia.org/wikipedia/commons/d/da/Steinway_%26_Sons_upright_piano%2C_model_K-132%2C_manufactured_at_Steinway%27s_factory_in_Hamburg%2C_Germany.png",
#by "Photo: © Copyright Steinway & Sons", CC BY-SA 3.0 <https://creativecommons.org/licenses/by-sa/3.0>, via Wikimedia Commons
"honeycomb" => "https://upload.wikimedia.org/wikipedia/commons/f/f7/Honey_comb.jpg",
#by Merdal, CC BY-SA 3.0 <http://creativecommons.org/licenses/by-sa/3.0/>, via Wikimedia Commons
"teapot" => "https://upload.wikimedia.org/wikipedia/commons/4/44/Black_tea_pot_cropped.jpg",
#by Mendhak, CC BY-SA 2.0 <https://creativecommons.org/licenses/by-sa/2.0>, via Wikimedia Commons
);
my @image_names = sort keys %images_for_test_to_uri;
if( IN_IPERL ) {
IPerl->html(
my_table( \@image_names, sub {
my ($image_name, $h) = @_;
(
$h->tt($image_name),
$h->a( { href => $images_for_test_to_uri{$image_name} },
$h->img({
src => $images_for_test_to_uri{$image_name},
alt => $image_name,
width => '50%',
})
),
)
})
);
}
B<DISPLAY>:
=for html <span style="display:inline-block;margin-left:1em;"><p><table style="width: 100%"><tr><td><tt>apple</tt></td><td><a href="https://upload.wikimedia.org/wikipedia/commons/1/15/Red_Apple.jpg"><img alt="apple" src="https://upload.wikimedia.org/...
=head2 Download the test images and transform them into suitable input data
We now fetch these images and prepare them to be the in the needed format by using C<Imager> to resize and add padding. Then we turn the C<Imager> data into a C<PDL> ndarray. Since the C<Imager> data is stored as 32-bits with 4 channels in the order ...
We then take all the PDL ndarrays and concatenate them. Again, note that the dimension lists for the PDL ndarray and the TFTensor are reversed.
sub imager_paste_center_pad {
my ($inner, $padded_sz, @rest) = @_;
my $outer = Imager->new( List::Util::mesh( [qw(xsize ysize)], $padded_sz ),
@rest
);
$outer->paste(
left => int( ($outer->getwidth - $inner->getwidth ) / 2 ),
top => int( ($outer->getheight - $inner->getheight) / 2 ),
src => $inner,
);
$outer;
}
sub imager_scale_to {
my ($img, $image_size) = @_;
my $rescaled = $img->scale(
List::Util::mesh( [qw(xpixels ypixels)], $image_size ),
type => 'min',
qtype => 'mixing', # 'mixing' seems to work better than 'normal'
);
}
sub load_image_to_pdl {
my ($uri, $image_size) = @_;
my $http = HTTP::Tiny->new;
my $response = $http->get( $uri );
die "Could not fetch image from $uri" unless $response->{success};
say "Downloaded $uri";
my $img = Imager->new;
$img->read( data => $response->{content} );
my $rescaled = imager_scale_to($img, $image_size);
say sprintf "Rescaled image from [ %d x %d ] to [ %d x %d ]",
$img->getwidth, $img->getheight,
$rescaled->getwidth, $rescaled->getheight;
my $padded = imager_paste_center_pad($rescaled, $image_size,
# ARGB fits in 32-bits (uint32_t)
channels => 4
);
say sprintf "Padded to [ %d x %d ]", $padded->getwidth, $padded->getheight;
# Create PDL ndarray from Imager data in-memory.
my $data;
$padded->write( data => \$data, type => 'raw' )
or die "could not write ". $padded->errstr;
# $data is packed as PDL->dims == [w,h] with ARGB pixels
# $ PDL::howbig(ulong) # 4
my $pdl_raw = zeros(ulong, $padded->getwidth, $padded->getheight);
${ $pdl_raw->get_dataref } = $data;
$pdl_raw->upd_data;
# Split uint32_t pixels into first dimension with 3 channels (R,G,B) with values 0-255.
my @shifts = map 8*$_, 0..2;
my $pdl_channels = $pdl_raw->dummy(0)
->and2(ulong(map 0xFF << $_, @shifts)->slice(':,*,*') )
->shiftright( ulong(@shifts)->slice(':,*,*') )
->byte;
my $pdl_scaled = (
# Scale to [ 0, 1 ].
( $pdl_channels / float(255) )
);
## flip vertically to see image right way up
#show_in_gnuplot( $pdl_channels->slice(':,:,-1:0') ); #DEBUG
#show_in_gnuplot( $pdl_scaled->slice(':,:,-1:0') * 255.0 ); #DEBUG
$pdl_scaled;
}
my @pdl_images = map {
load_image_to_pdl(
$images_for_test_to_uri{$_},
$model_name_to_params{$model_name}{image_size}
);
} @image_names;
my $pdl_image_batched = cat(@pdl_images);
my $t = FloatPDLTOTFTensor($pdl_image_batched);
p $pdl_image_batched;
p $t;
B<STREAM (STDOUT)>:
Downloaded https://upload.wikimedia.org/wikipedia/commons/1/15/Red_Apple.jpg
Rescaled image from [ 2418 x 2192 ] to [ 224 x 203 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/1/1c/Bananas_white_background.jpg
Rescaled image from [ 1600 x 1067 ] to [ 224 x 149 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/6/63/LT_471_%28LTZ_1471%29_Arriva_London_New_Routemaster_%2819522859218%29.jpg
Rescaled image from [ 3840 x 2560 ] to [ 224 x 149 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/4/49/2013-2016_Toyota_Corolla_%28ZRE172R%29_SX_sedan_%282018-09-17%29_01.jpg
Rescaled image from [ 4152 x 2252 ] to [ 224 x 121 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/4/4d/Cat_November_2010-1a.jpg
Rescaled image from [ 1795 x 2397 ] to [ 168 x 224 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/archive/a/a9/20090914031557%21Saluki_dog_breed.jpg
Rescaled image from [ 543 x 523 ] to [ 224 x 216 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/b/b8/James_Flamingos_MC.jpg
Rescaled image from [ 3000 x 1999 ] to [ 224 x 149 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/f/f7/Honey_comb.jpg
Rescaled image from [ 800 x 600 ] to [ 224 x 168 ]
Padded to [ 224 x 224 ]
Downloaded https://upload.wikimedia.org/wikipedia/commons/d/da/Steinway_%26_Sons_upright_piano%2C_model_K-132%2C_manufactured_at_Steinway%27s_factory_in_Hamburg%2C_Germany.png
lib/AI/TensorFlow/Libtensorflow/Manual/Notebook/InferenceUsingTFHubMobileNetV2Model.pod view on Meta::CPAN
</span><span style="color: #6666cc;">Nelem </span><span style=""> : </span><span style="color: #dd6;">1806336</span><span style="">
</span><span style="color: #6666cc;">Min </span><span style=""> : </span><span style="color: #f66;">0</span><span style="">
</span><span style="color: #6666cc;">Max </span><span style=""> : </span><span style="color: #99f;">1</span><span style="">
</span><span style="color: #6666cc;">Badflag </span><span style=""> : </span><span style="color: #2c2;">No</span><span style="">
</span><span style="color: #6666cc;">Has Bads</span><span style=""> : </span><span style="color: #2c2;">No</span><span style="">
</span><span style="color: #33ccff;">}</span><span style="">
</span><span style="color: #cc66cc;">AI::TensorFlow::Libtensorflow::Tensor</span><span style=""> </span><span style="color: #33ccff;">{</span><span style="">
</span><span style="color: #6666cc;">Type </span><span style=""> </span><span style="color: #cc66cc;">FLOAT</span><span style="">
</span><span style="color: #6666cc;">Dims </span><span style=""> </span><span style="color: #33ccff;">[</span><span style=""> </span><span style="color: #ff6633;">12</span><span style=""> </span><span style="color: #ff6633;">224</span><...
</span><span style="color: #6666cc;">NumDims </span><span style=""> </span><span style="color: #ff6633;">4</span><span style="">
</span><span style="color: #6666cc;">ElementCount </span><span style=""> </span><span style="color: #ff6633;">1806336</span><span style="">
</span><span style="color: #33ccff;">}</span><span style="">
</span></code></pre></span>
=head2 Run the model for inference
We can use the C<Run> method to run the session and get the output C<TFTensor>.
First, we send a single random input to warm up the model.
my $RunSession = sub {
my ($session, $t) = @_;
my @outputs_t;
$session->Run(
undef,
$outputs{in}, [$t],
$outputs{out}, \@outputs_t,
undef,
undef,
$s
);
AssertOK($s);
return $outputs_t[0];
};
say "Warming up the model";
use PDL::GSL::RNG;
my $rng = PDL::GSL::RNG->new('default');
my $image_size = $model_name_to_params{$model_name}{image_size};
my $warmup_input = zeros(float, 3, @$image_size, 1 );
$rng->get_uniform($warmup_input);
p $RunSession->($session, FloatPDLTOTFTensor($warmup_input));
B<STREAM (STDOUT)>:
Warming up the model
B<STREAM (STDERR)>:
=for html <span style="display:inline-block;margin-left:1em;"><pre style="display: block"><code><span style="color: #cc66cc;">AI::TensorFlow::Libtensorflow::Tensor</span><span style=""> </span><span style="color: #33ccff;">{</span><span style="">
</span><span style="color: #6666cc;">Type </span><span style=""> </span><span style="color: #cc66cc;">FLOAT</span><span style="">
</span><span style="color: #6666cc;">Dims </span><span style=""> </span><span style="color: #33ccff;">[</span><span style=""> </span><span style="color: #ff6633;">1</span><span style=""> </span><span style="color: #ff6633;">1001</span><...
</span><span style="color: #6666cc;">NumDims </span><span style=""> </span><span style="color: #ff6633;">2</span><span style="">
</span><span style="color: #6666cc;">ElementCount </span><span style=""> </span><span style="color: #ff6633;">1001</span><span style="">
</span><span style="color: #33ccff;">}</span><span style="">
</span></code></pre></span>
Then we send the batched image data. The returned scores need to by normalised using the L<softmax function|https://en.wikipedia.org/wiki/Softmax_function> with the following formula (taken from Wikipedia):
$$ {\displaystyle \sigma (\mathbf {z} )I<{i}={\frac {e^{z>{i}}}{\sum I<{j=1}^{K}e^{z>{j}}}}\ \ {\text{ for }}i=1,\dotsc ,K{\text{ and }}\mathbf {z} =(zI<{1},\dotsc ,z>{K})\in \mathbb {R} ^{K}.} $$
my $output_pdl_batched = FloatTFTensorToPDL($RunSession->($session, $t));
my $softmax = sub { ( map $_/sumover($_)->dummy(0), exp($_[0]) )[0] };
my $probabilities_batched = $softmax->($output_pdl_batched);
p $probabilities_batched;
B<STREAM (STDERR)>:
=for html <span style="display:inline-block;margin-left:1em;"><pre style="display: block"><code><span style="color: #cc66cc;">PDL</span><span style="color: #33ccff;"> {</span><span style="">
</span><span style="color: #6666cc;">Data </span><span style=""> : </span><span style="color: #669933;">too long to print</span><span style="">
</span><span style="color: #6666cc;">Type </span><span style=""> : </span><span style="color: #cc66cc;">float</span><span style="">
</span><span style="color: #6666cc;">Shape </span><span style=""> : </span><span style="color: #33ccff;">[</span><span style="color: #9999cc;">1001 12</span><span style="color: #33ccff;">]</span><span style="">
</span><span style="color: #6666cc;">Nelem </span><span style=""> : </span><span style="color: #dd6;">12012</span><span style="">
</span><span style="color: #6666cc;">Min </span><span style=""> : </span><span style="color: #f66;">2.73727380317723e-07</span><span style="">
</span><span style="color: #6666cc;">Max </span><span style=""> : </span><span style="color: #99f;">0.980696022510529</span><span style="">
</span><span style="color: #6666cc;">Badflag </span><span style=""> : </span><span style="color: #2c2;">No</span><span style="">
</span><span style="color: #6666cc;">Has Bads</span><span style=""> : </span><span style="color: #2c2;">No</span><span style="">
</span><span style="color: #33ccff;">}</span><span style="">
</span></code></pre></span>
=head2 Results summary
Then select the top 5 of those and find their class labels.
my $N = 5; # number to select
my $top_batched = $probabilities_batched->qsorti->slice([-1, -$N]);
my @top_lists = dog($top_batched);
my $includes_background_class = $probabilities_batched->dim(0) == IMAGENET_LABEL_COUNT_WITH_BG;
if( IN_IPERL ) {
my $html = IPerl->html(
my_table( [0..$#image_names], sub {
my ($batch_idx, $h) = @_;
my $image_name = $image_names[$batch_idx];
my @top_for_image = $top_lists[$batch_idx]->list;
(
$h->tt($image_name),
$h->a( { href => $images_for_test_to_uri{$image_name} },
$h->img({
src => $images_for_test_to_uri{$image_name},
alt => $image_name,
width => '50%',
})
),
do {
my @tr;
push @tr, [ $h->th('Rank', 'Label No', 'Label', 'Prob') ];
while( my ($i, $label_index) = each @top_for_image ) {
my $class_index = $includes_background_class ? $label_index : $label_index + 1;
push @tr, [ $h->td(
$i + 1,
$class_index,
$labels[$class_index],
$probabilities_batched->at($label_index,$batch_idx),
) ];
( run in 0.962 second using v1.01-cache-2.11-cpan-f6376fbd888 )