220 lines
8.1 KiB
TypeScript
220 lines
8.1 KiB
TypeScript
import * as tf from '../../dist/tfjs.esm';
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import {
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ExtractWeightsFunction, ParamMapping, ConvParams, extractWeightsFactory,
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} from '../common/index';
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import {
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MobileNetV1, NetParams, PointwiseConvParams, PredictionLayerParams,
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} from './types';
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function extractorsFactory(extractWeights: ExtractWeightsFunction, paramMappings: ParamMapping[]) {
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function extractDepthwiseConvParams(numChannels: number, mappedPrefix: string): MobileNetV1.DepthwiseConvParams {
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const filters = tf.tensor4d(extractWeights(3 * 3 * numChannels), [3, 3, numChannels, 1]);
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const batch_norm_scale = tf.tensor1d(extractWeights(numChannels));
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const batch_norm_offset = tf.tensor1d(extractWeights(numChannels));
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const batch_norm_mean = tf.tensor1d(extractWeights(numChannels));
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const batch_norm_variance = tf.tensor1d(extractWeights(numChannels));
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paramMappings.push(
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{ paramPath: `${mappedPrefix}/filters` },
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{ paramPath: `${mappedPrefix}/batch_norm_scale` },
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{ paramPath: `${mappedPrefix}/batch_norm_offset` },
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{ paramPath: `${mappedPrefix}/batch_norm_mean` },
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{ paramPath: `${mappedPrefix}/batch_norm_variance` },
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);
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return {
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filters,
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batch_norm_scale,
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batch_norm_offset,
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batch_norm_mean,
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batch_norm_variance,
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};
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}
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function extractConvParams(
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channelsIn: number,
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channelsOut: number,
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filterSize: number,
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mappedPrefix: string,
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isPointwiseConv?: boolean,
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): ConvParams {
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const filters = tf.tensor4d(
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extractWeights(channelsIn * channelsOut * filterSize * filterSize),
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[filterSize, filterSize, channelsIn, channelsOut],
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);
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const bias = tf.tensor1d(extractWeights(channelsOut));
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paramMappings.push(
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{ paramPath: `${mappedPrefix}/filters` },
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{ paramPath: `${mappedPrefix}/${isPointwiseConv ? 'batch_norm_offset' : 'bias'}` },
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);
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return { filters, bias };
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}
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function extractPointwiseConvParams(
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channelsIn: number,
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channelsOut: number,
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filterSize: number,
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mappedPrefix: string,
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): PointwiseConvParams {
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const {
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filters,
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bias,
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} = extractConvParams(channelsIn, channelsOut, filterSize, mappedPrefix, true);
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return {
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filters,
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batch_norm_offset: bias,
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};
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}
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function extractConvPairParams(
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channelsIn: number,
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channelsOut: number,
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mappedPrefix: string,
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): MobileNetV1.ConvPairParams {
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const depthwise_conv = extractDepthwiseConvParams(channelsIn, `${mappedPrefix}/depthwise_conv`);
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const pointwise_conv = extractPointwiseConvParams(channelsIn, channelsOut, 1, `${mappedPrefix}/pointwise_conv`);
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return { depthwise_conv, pointwise_conv };
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}
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function extractMobilenetV1Params(): MobileNetV1.Params {
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const conv_0 = extractPointwiseConvParams(3, 32, 3, 'mobilenetv1/conv_0');
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const conv_1 = extractConvPairParams(32, 64, 'mobilenetv1/conv_1');
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const conv_2 = extractConvPairParams(64, 128, 'mobilenetv1/conv_2');
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const conv_3 = extractConvPairParams(128, 128, 'mobilenetv1/conv_3');
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const conv_4 = extractConvPairParams(128, 256, 'mobilenetv1/conv_4');
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const conv_5 = extractConvPairParams(256, 256, 'mobilenetv1/conv_5');
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const conv_6 = extractConvPairParams(256, 512, 'mobilenetv1/conv_6');
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const conv_7 = extractConvPairParams(512, 512, 'mobilenetv1/conv_7');
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const conv_8 = extractConvPairParams(512, 512, 'mobilenetv1/conv_8');
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const conv_9 = extractConvPairParams(512, 512, 'mobilenetv1/conv_9');
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const conv_10 = extractConvPairParams(512, 512, 'mobilenetv1/conv_10');
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const conv_11 = extractConvPairParams(512, 512, 'mobilenetv1/conv_11');
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const conv_12 = extractConvPairParams(512, 1024, 'mobilenetv1/conv_12');
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const conv_13 = extractConvPairParams(1024, 1024, 'mobilenetv1/conv_13');
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return {
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conv_0,
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conv_1,
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conv_2,
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conv_3,
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conv_4,
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conv_5,
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conv_6,
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conv_7,
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conv_8,
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conv_9,
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conv_10,
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conv_11,
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conv_12,
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conv_13,
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};
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}
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function extractPredictionLayerParams(): PredictionLayerParams {
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const conv_0 = extractPointwiseConvParams(1024, 256, 1, 'prediction_layer/conv_0');
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const conv_1 = extractPointwiseConvParams(256, 512, 3, 'prediction_layer/conv_1');
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const conv_2 = extractPointwiseConvParams(512, 128, 1, 'prediction_layer/conv_2');
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const conv_3 = extractPointwiseConvParams(128, 256, 3, 'prediction_layer/conv_3');
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const conv_4 = extractPointwiseConvParams(256, 128, 1, 'prediction_layer/conv_4');
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const conv_5 = extractPointwiseConvParams(128, 256, 3, 'prediction_layer/conv_5');
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const conv_6 = extractPointwiseConvParams(256, 64, 1, 'prediction_layer/conv_6');
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const conv_7 = extractPointwiseConvParams(64, 128, 3, 'prediction_layer/conv_7');
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const box_encoding_0_predictor = extractConvParams(512, 12, 1, 'prediction_layer/box_predictor_0/box_encoding_predictor');
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const class_predictor_0 = extractConvParams(512, 9, 1, 'prediction_layer/box_predictor_0/class_predictor');
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const box_encoding_1_predictor = extractConvParams(1024, 24, 1, 'prediction_layer/box_predictor_1/box_encoding_predictor');
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const class_predictor_1 = extractConvParams(1024, 18, 1, 'prediction_layer/box_predictor_1/class_predictor');
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const box_encoding_2_predictor = extractConvParams(512, 24, 1, 'prediction_layer/box_predictor_2/box_encoding_predictor');
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const class_predictor_2 = extractConvParams(512, 18, 1, 'prediction_layer/box_predictor_2/class_predictor');
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const box_encoding_3_predictor = extractConvParams(256, 24, 1, 'prediction_layer/box_predictor_3/box_encoding_predictor');
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const class_predictor_3 = extractConvParams(256, 18, 1, 'prediction_layer/box_predictor_3/class_predictor');
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const box_encoding_4_predictor = extractConvParams(256, 24, 1, 'prediction_layer/box_predictor_4/box_encoding_predictor');
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const class_predictor_4 = extractConvParams(256, 18, 1, 'prediction_layer/box_predictor_4/class_predictor');
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const box_encoding_5_predictor = extractConvParams(128, 24, 1, 'prediction_layer/box_predictor_5/box_encoding_predictor');
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const class_predictor_5 = extractConvParams(128, 18, 1, 'prediction_layer/box_predictor_5/class_predictor');
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const box_predictor_0 = {
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box_encoding_predictor: box_encoding_0_predictor,
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class_predictor: class_predictor_0,
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};
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const box_predictor_1 = {
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box_encoding_predictor: box_encoding_1_predictor,
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class_predictor: class_predictor_1,
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};
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const box_predictor_2 = {
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box_encoding_predictor: box_encoding_2_predictor,
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class_predictor: class_predictor_2,
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};
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const box_predictor_3 = {
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box_encoding_predictor: box_encoding_3_predictor,
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class_predictor: class_predictor_3,
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};
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const box_predictor_4 = {
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box_encoding_predictor: box_encoding_4_predictor,
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class_predictor: class_predictor_4,
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};
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const box_predictor_5 = {
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box_encoding_predictor: box_encoding_5_predictor,
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class_predictor: class_predictor_5,
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};
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return {
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conv_0,
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conv_1,
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conv_2,
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conv_3,
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conv_4,
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conv_5,
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conv_6,
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conv_7,
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box_predictor_0,
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box_predictor_1,
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box_predictor_2,
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box_predictor_3,
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box_predictor_4,
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box_predictor_5,
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};
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}
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return {
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extractMobilenetV1Params,
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extractPredictionLayerParams,
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};
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}
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export function extractParams(weights: Float32Array): { params: NetParams, paramMappings: ParamMapping[] } {
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const paramMappings: ParamMapping[] = [];
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const {
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extractWeights,
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getRemainingWeights,
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} = extractWeightsFactory(weights);
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const {
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extractMobilenetV1Params,
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extractPredictionLayerParams,
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} = extractorsFactory(extractWeights, paramMappings);
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const mobilenetv1 = extractMobilenetV1Params();
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const prediction_layer = extractPredictionLayerParams();
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const extra_dim = tf.tensor3d(
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extractWeights(5118 * 4),
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[1, 5118, 4],
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);
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const output_layer = {
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extra_dim,
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};
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paramMappings.push({ paramPath: 'output_layer/extra_dim' });
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if (getRemainingWeights().length !== 0) {
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throw new Error(`weights remaing after extract: ${getRemainingWeights().length}`);
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}
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return {
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params: {
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mobilenetv1,
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prediction_layer,
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output_layer,
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},
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paramMappings,
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};
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}
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