From ad2546e3b33eabeeeeed7d1b1f5e804181e819b7 Mon Sep 17 00:00:00 2001 From: Mingyu Yin Date: Tue, 22 Sep 2020 15:11:09 +0800 Subject: dnn/native: add native support for dense Signed-off-by: Mingyu Yin --- tests/dnn/.gitignore | 1 + tests/dnn/dnn-layer-dense-test.c | 131 +++++++++++++++++++++++++++++++++++++++ 2 files changed, 132 insertions(+) create mode 100644 tests/dnn/dnn-layer-dense-test.c (limited to 'tests/dnn') diff --git a/tests/dnn/.gitignore b/tests/dnn/.gitignore index b847a01177..03b04d6653 100644 --- a/tests/dnn/.gitignore +++ b/tests/dnn/.gitignore @@ -5,3 +5,4 @@ /dnn-layer-mathbinary-test /dnn-layer-mathunary-test /dnn-layer-avgpool-test +/dnn-layer-dense-test diff --git a/tests/dnn/dnn-layer-dense-test.c b/tests/dnn/dnn-layer-dense-test.c new file mode 100644 index 0000000000..2c11ec5218 --- /dev/null +++ b/tests/dnn/dnn-layer-dense-test.c @@ -0,0 +1,131 @@ +/* + * Copyright (c) 2020 + * + * This file is part of FFmpeg. + * + * FFmpeg is free software; you can redistribute it and/or + * modify it under the terms of the GNU Lesser General Public + * License as published by the Free Software Foundation; either + * version 2.1 of the License, or (at your option) any later version. + * + * FFmpeg is distributed in the hope that it will be useful, + * but WITHOUT ANY WARRANTY; without even the implied warranty of + * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU + * Lesser General Public License for more details. + * + * You should have received a copy of the GNU Lesser General Public + * License along with FFmpeg; if not, write to the Free Software + * Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA + */ + +#include +#include +#include +#include "libavfilter/dnn/dnn_backend_native_layer_dense.h" + +#define EPSON 0.00001 + +static int test(void) +{ + // the input data and expected data are generated with below python code. + /* + x = tf.placeholder(tf.float32, shape=[1, None, None, 3]) + y = tf.layers.dense(input_x, 3, activation=tf.nn.sigmoid, bias_initializer=tf.keras.initializers.he_normal()) + data = np.random.rand(1, 5, 6, 3); + + sess=tf.Session() + sess.run(tf.global_variables_initializer()) + + weights = dict([(var.name, sess.run(var)) for var in tf.trainable_variables()]) + kernel = weights['dense/kernel:0'] + kernel = np.transpose(kernel, [1, 0]) + print("kernel:") + print(kernel.shape) + print(list(kernel.flatten())) + + bias = weights['dense/bias:0'] + print("bias:") + print(bias.shape) + print(list(bias.flatten())) + + output = sess.run(y, feed_dict={x: data}) + + print("input:") + print(data.shape) + print(list(data.flatten())) + + print("output:") + print(output.shape) + print(list(output.flatten())) + */ + + ConvolutionalParams params; + DnnOperand operands[2]; + int32_t input_indexes[1]; + float input[1*5*6*3] = { + 0.5552418686576308, 0.20653189262022464, 0.31115120939398877, 0.5897014433221428, 0.37340078861060655, 0.6470921693941893, 0.8039950367872679, 0.8762700891949274, + 0.6556655583829558, 0.5911096107039339, 0.18640250865290997, 0.2803248779238966, 0.31586613136402053, 0.9447300740056483, 0.9443980824873418, 0.8158851991115941, + 0.5631010340387631, 0.9407402251929046, 0.6485434876551682, 0.5631376966470001, 0.17581924875609634, 0.7033802439103178, 0.04802402495561675, 0.9183681450194972, + 0.46059317944364, 0.07964160481596883, 0.871787076270302, 0.973743142324361, 0.15923146943258415, 0.8212946080584571, 0.5415954459227064, 0.9552813822803975, + 0.4908552668172057, 0.33723691635292274, 0.46588057864910026, 0.8994239961321776, 0.09845220457674186, 0.1713400292123486, 0.39570294912818826, 0.08018956486392803, + 0.5290478278169032, 0.7141906125920976, 0.0320878067840098, 0.6412406575332606, 0.0075712007102423096, 0.7150828462386156, 0.1311989216968138, 0.4706847944253756, + 0.5447610794883336, 0.3430923933318001, 0.536082357943209, 0.4371629342483694, 0.40227962985019927, 0.3553806249465469, 0.031806622424259245, 0.7053916426174, + 0.3261570237309813, 0.419500213292063, 0.3155691223480851, 0.05664028113178088, 0.3636491555914486, 0.8502419746667123, 0.9836596530684955, 0.1628681802975801, + 0.09410832912479894, 0.28407218939480294, 0.7983417928813697, 0.24132158596506748, 0.8154729498062224, 0.29173768373895637, 0.13407102008052096, 0.18705786678800385, + 0.7167943621295573, 0.09222004247174376, 0.2319220738766018, 0.17708964382285064, 0.1391440370249517, 0.3254088083499256, 0.4013916894718289, 0.4819742663322323, + 0.15080103744648077, 0.9302407847555013, 0.9397597961319524, 0.5719200825550793, 0.9538938024682824, 0.9583882089203861, 0.5168861091262276, 0.1926396841842669, + 0.6781176744337578, 0.719366447288566 + }; + float expected_output[1*5*6*3] = { + -0.3921688, -0.9243112, -0.29659146, -0.64000785, -0.9466343, -0.62125254, -0.71759033, -0.9171336, -0.735589, -0.34365994, + -0.92100817, -0.23903961, -0.8962277, -0.9521279, -0.90962386, -0.7488303, -0.9563761, -0.7701762, -0.40800542, -0.87684774, + -0.3339763, -0.6354543, -0.97068924, -0.6246325, -0.6992075, -0.9706726, -0.6818918, -0.51864433, -0.9592881, -0.51187396, + -0.7423632, -0.89911884, -0.7457824, -0.82009757, -0.96402895, -0.8235518, -0.61980766, -0.94494647, -0.5410502, -0.8281218, + -0.95508635, -0.8201453, -0.5937325, -0.8679507, -0.500767, -0.39430764, -0.93967676, -0.32183182, -0.58913624, -0.939717, + -0.55179894, -0.55004454, -0.9214453, -0.4889004, -0.75294703, -0.9118363, -0.7200309, -0.3248641, -0.8878874, -0.18977344, + -0.8873837, -0.9571257, -0.90145934, -0.50521654, -0.93739635, -0.39051685, -0.61143184, -0.9591179, -0.605999, -0.40008977, + -0.92219675, -0.26732883, -0.19607787, -0.9172511, -0.07068595, -0.5409857, -0.9387041, -0.44181606, -0.4705004, -0.8899935, + -0.37997037, -0.66105115, -0.89754754, -0.68141997, -0.6324047, -0.886776, -0.65066385, -0.8334821, -0.94801456, -0.83297 + }; + float *output; + float kernel[3*3] = { + 0.56611896, -0.5144603, -0.82600045, 0.19219112, 0.3835776, -0.7475352, 0.5209291, -0.6301091, -0.99442935}; + float bias[3] = {-0.3654299, -1.5711838, -0.15546428}; + + params.activation = TANH; + params.has_bias = 1; + params.biases = bias; + params.input_num = 3; + params.kernel = kernel; + params.output_num = 3; + + operands[0].data = input; + operands[0].dims[0] = 1; + operands[0].dims[1] = 5; + operands[0].dims[2] = 6; + operands[0].dims[3] = 3; + operands[1].data = NULL; + + input_indexes[0] = 0; + dnn_execute_layer_dense(operands, input_indexes, 1, ¶ms, NULL); + + output = operands[1].data; + for (int i = 0; i < sizeof(expected_output) / sizeof(float); i++) { + if (fabs(output[i] - expected_output[i]) > EPSON) { + printf("at index %d, output: %f, expected_output: %f\n", i, output[i], expected_output[i]); + av_freep(&output); + return 1; + } + } + + av_freep(&output); + return 0; +} + +int main(int argc, char **argv) +{ + if (test()) + return 1; + + return 0; +} -- cgit v1.2.3