1. 30 Nov, 2018 1 commit
    • Sergio Guadarrama's avatar
      Merged commit includes the following changes: · 2c680af3
      Sergio Guadarrama authored
      223150784  by Sergio Guadarrama:
      
          Allow using batch norm scale parameters for Inception models.
      
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      221391590  by Sergio Guadarrama:
      
          Add support for group normalization in the object detection API. Just adding MobileNet-v1 SSD currently. This may serve as a road map for other models that wish to support group normalization as an option.
      
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      221342582  by Sergio Guadarrama:
      
          Internal change
      
      220817084  by Sergio Guadarrama:
      
          Internal change
      
      216005108  by Sergio Guadarrama:
      
          Introduce hparam `use_bounded_activation` for NASNet. The hparam decides whether to use
          1. bounded activation
          2. clip_by_value for the add operands and bounded activation after add operator.
          3. bounded activation before 'none' and 'pooling' branch
          The restriction on the tensor value range makes it compatible with quantized inference.
      
      --
      
      PiperOrigin-RevId: 223150784
      2c680af3
  2. 27 Feb, 2018 1 commit
    • pkulzc's avatar
      Internal changes for slim (#3448) · 629adffa
      pkulzc authored
      * Merged commit includes the following changes:
      186565198  by Sergio Guadarrama:
      
          Applied random_hsv_in_yiq in inception_preprocessing.
      
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      186501039  by Sergio Guadarrama:
      
          Applied random_hsv_in_yiq in inception_preprocessing.
      
      --
      186013907  by Sergio Guadarrama:
      
          Internal change
      
      185715309  by Sergio Guadarrama:
      
          Obviates the need for prepadding on mobilenet v1 and v2 for fully convolutional models.
      
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      184266252  by Sergio Guadarrama:
      
          Give build_nasnet_*() functions an optional flag use_aux_head,
          and add an internal-only arg scope to NasNetA*Cell._apply_drop_path().
      
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      183865228  by Sergio Guadarrama:
      
          Internal change
      
      179580924  by Sergio Guadarrama:
      
          Internal change
      
      177320302  by Sergio Guadarrama:
      
          Internal change
      
      177130184  by Sergio Guadarrama:
      
          Make slim nets tests faster by using smaller examples of oversized inputs.
      
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      176965289  by Sergio Guadarrama:
      
          Internal change
      
      176585260  by Sergio Guadarrama:
      
          Internal change
      
      176534973  by Sergio Guadarrama:
      
          Internal change
      
      175526881  by Sergio Guadarrama:
      
          Internal change
      
      174967704  by Sergio Guadarrama:
      
          Treat num_classes=0 same as None in a few slim nets overlooked by the recent
          change.
      
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      174443227  by Sergio Guadarrama:
      
          Internal change
      
      174281864  by Sergio Guadarrama:
      
          Internal change
      
      174249903  by Sergio Guadarrama:
      
          Fix nasnet image classification and object detection by moving the option to turn ON or OFF batch norm training into it's own arg_scope used only by detection
      
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      173954505  by Sergio Guadarrama:
      
          Merge pull request #2651 from sguada/tmp1
      
          Fixes imports
      
          Closes #2636
      
          ORIGINAL_AUTHOR=Jon Shlens <shlens@users.noreply.github.com>
          COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/models/pull/2636 from tensorflow:sguada-patch-1 19ff570f52df5ab655c00fb439129b201c5f2dce
      
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      173928094  by Sergio Guadarrama:
      
          Remove pending imports
      
      --
      
      PiperOrigin-RevId: 186565198
      
      * Remove internal links.
      629adffa
  3. 28 Oct, 2017 1 commit
  4. 21 Sep, 2017 1 commit
  5. 02 Aug, 2017 1 commit
  6. 20 Feb, 2017 1 commit
  7. 30 Aug, 2016 1 commit