- 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
* Modify segmentation tests compare against expected values. * Exclude flaky autocast tests. Co-authored-by:Francisco Massa <fvsmassa@gmail.com>
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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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- 14 Jan, 2021 1 commit
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Vasilis Vryniotis authored
* Add MobileNetV3 Architecture in TorchVision (#3182) * Adding implementation of network architecture * Adding rmsprop support on the train.py * Adding auto-augment and random-erase in the training scripts. * Adding support for reduced tail on MobileNetV3. * Tagging blocks with comments. * Adding documentation, pre-trained model URL and a minor refactoring. * Handling better untrained supported models.
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- 09 Nov, 2020 1 commit
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Vasilis Vryniotis authored
* Change children() to modules() to ensure init happens in all blocks. * Update expected values of all detection models. * Revert "Update expected values of all detection models." This reverts commit 050b64ae * Update expecting values.
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- 06 Nov, 2020 1 commit
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Vasilis Vryniotis authored
* Simplify the ACCEPT=True logic in assertExpected(). * Separate the expected filename estimation from assertExpected * Unflatten expected values. * Assert for duplicate scores if primary check fails. * Remove custom exceptions for algorithms and add a compact function for shrinking large ouputs. * Removing unused variables. * Add warning and comments. * Re-enable all autocast unit-test for detection and marking the tests as skipped in partial validation. * Move test skip at the end. * Changing the warning message.
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- 20 Oct, 2020 1 commit
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Vasilis Vryniotis authored
* Vectorize operations, across all feaure levels. * Remove unnecessary other_outputs variable. * Split per feature level. * Perform batched_nms across feature levels. * Add extra parameter for limiting detections before and after nms. * Restoring default threshold. * Apply suggestions from code review Co-authored-by:
Francisco Massa <fvsmassa@gmail.com> * Renaming variable. Co-authored-by:
Francisco Massa <fvsmassa@gmail.com>
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- 16 Oct, 2020 1 commit
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Vasilis Vryniotis authored
* Modify expected value and threshold for retinanet unit-test. * Disable tests on GPU Co-authored-by:Francisco Massa <fvsmassa@gmail.com>
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- 13 Oct, 2020 1 commit
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Francisco Massa authored
* Add rough implementation of RetinaNet. * Move AnchorGenerator to a seperate file. * Move box similarity to Matcher. * Expose extra blocks in FPN. * Expose retinanet in __init__.py. * Use P6 and P7 in FPN for retinanet. * Use parameters from retinanet for anchor generation. * General fixes for retinanet model. * Implement loss for retinanet heads. * Output reshaped outputs from retinanet heads. * Add postprocessing of detections. * Small fixes. * Remove unused argument. * Remove python2 invocation of super. * Add postprocessing for additional outputs. * Add missing import of ImageList. * Remove redundant import. * Simplify class correction. * Fix pylint warnings. * Remove the label adjustment for background class. * Set default score threshold to 0.05. * Add weight initialization for regression layer. * Allow training on images with no annotations. * Use smooth_l1_loss with beta value. * Add more typehints for TorchScript conversions. * Fix linting issues. * Fix type hints in postprocess_detections. * Fix type annotations for TorchScript. * Fix inconsistency with matched_idxs. * Add retinanet model test. * Add missing JIT annotations. * Remove redundant model construction Make tests pass * Fix bugs during training on newer PyTorch and unused params in DDP Needs cleanup and to add back support for images with no annotations * Cleanup resnet_fpn_backbone * Use L1 loss for regression Gives 1mAP improvement over smooth l1 * Disable support for images with no annotations Need to fix distributed first * Fix retinanet tests Need to deduplicate those box checks * Fix Lint * Add pretrained model * Add training info for retinanet Co-authored-by:
Hans Gaiser <hansg91@gmail.com> Co-authored-by:
Hans Gaiser <hans.gaiser@robovalley.com> Co-authored-by:
Hans Gaiser <hans.gaiser@robohouse.com>
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- 22 Oct, 2019 1 commit
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fbbradheintz authored
* correctness test implemented with old test architecture * reverted an unneeded change, ran flake8 * moving to relative tolerance of 1 part in 10k for classification correctness checks * going down to 1 part in 1000 for correctness checks bc architecture differences * one percent relative tolerance
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- 18 Oct, 2019 1 commit
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Francisco Massa authored
This reverts commit 1e857d93.
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- 17 Oct, 2019 1 commit
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fbbradheintz authored
* added correctness tests for classification models * refactored tests for extensibility & usability * flake8 fixes
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- 01 Oct, 2019 1 commit
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eellison authored
* add expected result tests * fix wrong assertion * start with only detection models * remove unneeded rng setting * fix test * add tuple support * update test * syntax error * treat .pkl files as binary data, see : https://git-scm.com/book/en/v2/Customizing-Git-Git-Attributes#_binary_files * fix test * fix elif * Map tensor results and enforce maximum pickle size * unrelated change * larger rtol * pass rtol atol around * last commit i swear... * respond to comments * fix flake * fix py2 flake
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