- 29 Sep, 2021 1 commit
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Kai Zhang authored
* initial code * add SqueezeExcitation * initial code * add SqueezeExcitation * add SqueezeExcitation * regnet blocks, stems and model definition * nit * add fc layer * use Callable instead of Enum for block, stem and activation * add regnet_x and regnet_y model build functions, add docs * remove unused depth * use BN/activation constructor and ConvBNActivation * add expected test pkl files * allow custom activation in SqueezeExcitation * use ReLU as the default activation * initial code * add SqueezeExcitation * initial code * add SqueezeExcitation * add SqueezeExcitation * regnet blocks, stems and model definition * nit * add fc layer * use Callable instead of Enum for block, stem and activation * add regnet_x and regnet_y model build functions, add docs * remove unused depth * use BN/activation constructor and ConvBNActivation * reuse SqueezeExcitation from efficientnet * refactor RegNetParams into BlockParams * use nn.init, replace np with torch * update README * construct model with stem, block, classifier instances * Revert "construct model with stem, block, classifier instances" This reverts commit 850f5f3ed01a2a9b36fcbf8405afd6e41d2e58ef. * remove unused blocks * support scaled model * fuse into ConvBNActivation * make reset_parameters private * fix type errors * fix for unit test * add pretrained weights for 6 variant models, update docs
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- 26 Sep, 2021 1 commit
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Prabhat Roy authored
* Replaced ToTensor with a combination of PILToTensor and ConvertImageDtype * Pass dtype
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- 21 Sep, 2021 3 commits
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Prabhat Roy authored
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Vasilis Vryniotis authored
* Adding ExponentialLR and LinearLR * Fix arg type of --lr-warmup-decay * Adding support of Zero gamma BN and SGD with nesterov. * Fix --lr-warmup-decay for video_classification. * Update bn_reinit * Fix pre-existing bug on num_classes of model * Remove zero gamma. * Use fstrings.
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Prabhat Roy authored
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- 20 Sep, 2021 1 commit
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Shruti Pulstya authored
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- 17 Sep, 2021 1 commit
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Vasilis Vryniotis authored
* Warmup on Classficiation references. * Adjust epochs for cosine. * Warmup on Segmentation references. * Warmup on Video classification references. * Adding support of both types of warmup in segmentation. * Use LinearLR in detection. * Fix deprecation warning.
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- 15 Sep, 2021 1 commit
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Vasilis Vryniotis authored
* Add RandomMixupCutmix. * Add test with real data. * Use dataloader and collate in the test. * Making RandomMixupCutmix JIT scriptable. * Move out label_smoothing and try roll instead of flip * Adding mixup/cutmix in references script. * Handle one-hot encoded target in accuracy. * Add support of devices on tests. * Separate Mixup from Cutmix. * Add check for floats. * Adding device on expect value. * Remove hardcoded weights. * One-hot only when necessary. * Fix linter. * Moving mixup and cutmix to references. * Final code clean up.
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- 14 Sep, 2021 4 commits
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Vasilis Vryniotis authored
* Update log message. * Update fstring.
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Prabhat Roy authored
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Prabhat Roy authored
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Yonghye Kwon authored
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- 13 Sep, 2021 1 commit
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Philip Meier authored
* add pre-commit hooks * ignore yamls in packaging/* * add pre-commit to contributing guide lines * Update CONTRIBUTING.md Co-authored-by:
Nicolas Hug <contact@nicolas-hug.com> * remove some hooks * fix docstrings * fix end of files Co-authored-by:
Nicolas Hug <contact@nicolas-hug.com>
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- 10 Sep, 2021 1 commit
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D. Khuê Lê-Huu authored
* Fix training resuming in references/segmentation * Clarification for training resnext101_32x8d * Update references/classification/README.md Co-authored-by:
Nicolas Hug <contact@nicolas-hug.com> Co-authored-by:
Nicolas Hug <contact@nicolas-hug.com>
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- 09 Sep, 2021 1 commit
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Prabhat Roy authored
* Added Exponential Moving Average support to classification reference script * Addressed review comments * Updated model argument
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- 06 Sep, 2021 1 commit
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SamuelGabriel authored
* Initial Proposal * Tensor Save Test + Test Name Fix * Formatting + removing unused argument * fix old argument * fix isnan check error + indexing error with jit * Fix Flake8 error. * Fix MyPy error. * Fix Flake8 error. * Fix PyTorch JIT error in UnitTests due to type annotation. * Fixing tests. * Removing type ignore. * Adding support of ta_wide in references. * Move methods in classes. * Moving new classes to the bottom. * Specialize to TA to TAwide * Add missing type * Fixing lint * Fix doc * Fix search space of TrivialAugment. Co-authored-by:
Vasilis Vryniotis <datumbox@users.noreply.github.com> Co-authored-by:
Vasilis Vryniotis <vvryniotis@fb.com>
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- 05 Sep, 2021 1 commit
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Kai Zhang authored
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- 02 Sep, 2021 2 commits
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Vasilis Vryniotis authored
* Adding randaugment implementation * Refactoring. * Adding num_magnitude_bins. * Adding FIXME.
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Vasilis Vryniotis authored
* Adding label smoothing on classification reference. * Replace underscore with dash.
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- 26 Aug, 2021 2 commits
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Vasilis Vryniotis authored
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Vasilis Vryniotis authored
* Adding code skeleton * Adding MBConvConfig. * Extend SqueezeExcitation to support custom min_value and activation. * Implement MBConv. * Replace stochastic_depth with operator. * Adding the rest of the EfficientNet implementation * Update torchvision/models/efficientnet.py * Replacing 1st activation of SE with SiLU. * Adding efficientnet_b3. * Replace mobilenetv3 assets with custom. * Switch to standard sigmoid and reconfiguring BN. * Reconfiguration of efficientnet. * Add repr * Add weights. * Update weights. * Adding B5-B7 weights. * Update docs and hubconf. * Fix doc link. * Fix typo on comment.
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- 21 Jun, 2021 1 commit
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Nicolas Hug authored
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- 18 Jun, 2021 1 commit
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beet authored
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- 19 May, 2021 1 commit
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Prabhat Roy authored
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- 12 May, 2021 1 commit
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Vasilis Vryniotis authored
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- 11 May, 2021 1 commit
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Vasilis Vryniotis authored
* Partial implementation of SSDlite. * Add normal init and BN hyperparams. * Refactor to keep JIT happy * Completed SSDlite. * Fix lint * Update todos * Add expected file in repo. * Use C4 expansion instead of C4 output. * Change scales formula for Default Boxes. * Add cosine annealing on trainer. * Make T_max count epochs. * Fix test and handle corner-case. * Add support of support width_mult * Add ssdlite presets. * Change ReLU6, [-1,1] rescaling, backbone init & no pretraining. * Use _reduced_tail=True. * Add sync BN support. * Adding the best config along with its weights and documentation. * Make mean/std configurable. * Fix not implemented for half exception
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- 07 May, 2021 1 commit
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Vasilis Vryniotis authored
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- 06 May, 2021 1 commit
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Vasilis Vryniotis authored
* Add submitit script, partition param and parser on its own method. * Fix method names, handle add_help correctly and refactoring. * Delete run_with_submitit.py file
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- 30 Apr, 2021 1 commit
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Vasilis Vryniotis authored
* Early skeleton of API. * Adding MultiFeatureMap and vgg16 backbone. * Making vgg16 backbone same as paper. * Making code generic to support all vggs. * Moving vgg's extra layers a separate class + L2 scaling. * Adding header vgg layers. * Fix maxpool patching. * Refactoring code to allow for support of different backbones & sizes: - Skeleton for Default Boxes generator class - Dynamic estimation of configuration when possible - Addition of types * Complete the implementation of DefaultBox generator. * Replace randn with empty. * Minor refactoring * Making clamping between 0 and 1 optional. * Change xywh to xyxy encoding. * Adding parameters and reusing objects in constructor. * Temporarily inherit from Retina to avoid dup code. * Implement forward methods + temp workarounds to inherit from retina. * Inherit more methods from retinanet. * Fix type error. * Add Regression loss. * Fixing JIT issues. * Change JIT workaround to minimize new code. * Fixing initialization bug. * Add classification loss. * Update todos. * Add weight loading support. * Support SSD512. * Change kernel_size to get output size 1x1 * Add xavier init and refactoring. * Adding unit-tests and fixing JIT issues. * Add a test for dbox generator. * Remove unnecessary import. * Workaround on GeneralizedRCNNTransform to support fixed size input. * Remove unnecessary random calls from the test. * Remove more rand calls from the test. * change mapping and handling of empty labels * Fix JIT warnings. * Speed up loss. * Convert 0-1 dboxes to original size. * Fix warning. * Fix tests. * Update comments. * Fixing minor bugs. * Introduce a custom DBoxMatcher. * Minor refactoring * Move extra layer definition inside feature extractor. * handle no bias on init. * Remove fixed image size limitation * Change initialization values for bias of classification head. * Refactoring and update test file. * Adding ResNet backbone. * Minor refactoring. * Remove inheritance of retina and general refactoring. * SSD should fix the input size. * Fixing messages and comments. * Silently ignoring exception if test-only. * Update comments. * Update regression loss. * Restore Xavier init everywhere, update the negative sampling method, change the clipping approach. * Fixing tests. * Refactor to move the losses from the Head to the SSD. * Removing resnet50 ssd version. * Adding support for best performing backbone and its config. * Refactor and clean up the API. * Fix lint * Update todos and comments. * Adding RandomHorizontalFlip and RandomIoUCrop transforms. * Adding necessary checks to our tranforms. * Adding RandomZoomOut. * Adding RandomPhotometricDistort. * Moving Detection transforms to references. * Update presets * fix lint * leave compose and object * Adding scaling for completeness. * Adding params in the repr * Remove unnecessary import. * minor refactoring * Remove unnecessary call. * Give better names to DBox* classes * Port num_anchors estimation in generator * Remove rescaling and fix presets * Add the ability to pass a custom head and refactoring. * fix lint * Fix unit-test * Update todos. * Change mean values. * Change the default parameter of SSD to train the full VGG16 and remove the catch of exception for eval only. * Adding documentation * Adding weights and updating readmes. * Update the model weights with a more performing model. * Adding doc for head. * Restore import.
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- 17 Apr, 2021 1 commit
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Nicolas Hug authored
Co-authored-by:Vasilis Vryniotis <datumbox@users.noreply.github.com>
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- 10 Feb, 2021 1 commit
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Vasilis Vryniotis authored
* Adding the average_checkpoints() method. * Adding the store_model_weights() method.
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- 09 Feb, 2021 1 commit
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Vasilis Vryniotis authored
* Adding TODO placeholders. * More placeholders. * Add MobileNetV3 small pre-trained weights. * Remove placeholders.
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- 02 Feb, 2021 1 commit
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Vasilis Vryniotis authored
* Refactoring mobilenetv3 to make code reusable. * Adding quantizable MobileNetV3 architecture. * Fix bug on reference script. * Moving documentation of quantized models in the right place. * Update documentation. * Workaround for loading correct weights of quant model. * Update weight URL and readme. * Adding eval.
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- 29 Jan, 2021 1 commit
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Nicolas Hug authored
* Document undodcumented parameters * remove setup.cfg changes * Properly pass normalize down instead of deprecating it * Fix flake8 * Add new CI check * Fix type spec * Leave normalize be part of kwargs Co-authored-by:Vasilis Vryniotis <datumbox@users.noreply.github.com>
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- 28 Jan, 2021 1 commit
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Vasilis Vryniotis authored
* Adding presets in the classification reference scripts. * Adding presets in the object detection reference scripts. * Adding presets in the segmentation reference scripts. * Adding presets in the video classification reference scripts. * Moving flip at the end to align with image classification signature.
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- 27 Jan, 2021 1 commit
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Vasilis Vryniotis authored
* Making _segm_resnet() generic and reusable. * Adding fcn and deeplabv3 directly on mobilenetv3 backbone. * Adding tests for segmentation models. * Rename is_strided with _is_cn. * Add dilation support on MobileNetV3 for Segmentation. * Add Lite R-ASPP with MobileNetV3 backbone. * Add pretrained model weights. * Removing model fcn_mobilenet_v3_large. * Adding docs and imports. * Fixing typo and readme.
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- 25 Jan, 2021 1 commit
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Vasilis Vryniotis authored
Co-authored-by:Francisco Massa <fvsmassa@gmail.com>
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- 22 Jan, 2021 1 commit
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Nicolas Hug authored
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- 19 Jan, 2021 1 commit
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Vasilis Vryniotis authored
* Tag fasterrcnn mobilenetv3 model with 320, add new inference config that makes it 2x faster sacrificing a bit of mAP. * Add a high resolution fasterrcnn mobilenetv3 model. * Update tests and expected values.
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- 18 Jan, 2021 1 commit
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Vasilis Vryniotis authored
* Minor refactoring of a private method to make it reusuable. * Adding a FasterRCNN + MobileNetV3 with & w/o FPN models. * Reducing Resolution to 320-640 and anchor sizes to 16-256. * Increase anchor sizes. * Adding rpn score threshold param on the train script. * Adding trainable_backbone_layers param on the train script. * Adding rpn_score_thresh param directly in fasterrcnn_mobilenet_v3_large_fpn. * Remove fasterrcnn_mobilenet_v3_large prototype and update expected file. * Update documentation and adding weights. * Use buildin Identity. * Fix spelling.
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