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		<MO_version value="unknown version"/>
		<cli_parameters>
			<caffe_parser_path value="DIR"/>
			<data_type value="FP16"/>
			<disable_nhwc_to_nchw value="False"/>
			<disable_omitting_optional value="False"/>
			<disable_resnet_optimization value="False"/>
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		</cli_parameters>
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	<quantization_parameters>
		<config>{
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			'algorithms': [
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					'name': 'DefaultQuantization',
					'params': {
						'preset': 'performance',
						'stat_subset_size': 300
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								'classes': 80
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						}
					],
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							'name': 'barrier_vehicle_detection_dataset_index_class_2',
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							'annotation_conversion': {
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								'annotation_file': 'PATH',
								'index_of_class': 2
							},
							'annotation': 'barrier_bitvehicle_index_of_class_2.pickle',
							'dataset_meta': 'barrier_bitvehicle_index_of_class_2.json',
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								{
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									'size': 416
								}
							],
							'postprocessing': [
								{
									'type': 'resize_prediction_boxes'
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								{
									'type': 'filter',
									'apply_to': 'prediction',
									'min_confidence': 0.001,
									'remove_filtered': true
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								{
									'type': 'nms',
									'overlap': 0.5
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								{
									'type': 'clip_boxes',
									'apply_to': 'prediction'
								}
							],
							'metrics': [
								{
									'type': 'map',
									'integral': '11point',
									'ignore_difficult': false,
									'presenter': 'print_scalar'
								},
								{
									'type': 'coco_precision',
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									'threshold': 0.5
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						}
					]
				}
			],
			'stat_requests_number': null,
			'eval_requests_number': null,
			'type': 'accuracy_checker'
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	}</config>
		<version value="1.0"/>
		<cli_params value="{'evaluate': False, 'output_dir': 'PATH', 'direct_dump': True, 'log_level': 'INFO', 'pbar': False, 'stream_output': False, 'keep_uncompressed_weights': False}"/>
	</quantization_parameters>
</net>
