BDG-Net: Boundary Distribution Guided Network for Accurate Polyp Segmentation
Data augmentation has become a de facto component for training
high-performance deep image classifiers, but its potential is under-explored
for object detection. Noting that most state-of-the-art object detectors
benefit from fine-tuning a pre-trained classifier, we first study how the
classifiers' gains from various data augmentations transfer to object
detection. The results are discouraging; the gains diminish after fine-tuning
in terms of either accuracy or robustness. This work instead augments the
fine-tuning stage for object detectors by exploring adversarial examples, which
can be viewed as a model-dependent data augmentation. Our method dynamically
selects the stronger adversarial images sourced from a detector's
classification and localization branches and evolves with the detector to
ensure the augmentation policy stays current and relevant. This model-dependent
augmentation generalizes to different object detectors better than AutoAugment,
a model-agnostic augmentation policy searched based on one particular detector.
Our approach boosts the performance of state-of-the-art EfficientDets by +1.1
mAP on the COCO object detection benchmark. It also improves the detectors'
robustness against natural distortions by +3.8 mAP and against domain shift by
+1.3 mAP. Models are available at
https://github.com/google/automl/tree/master/efficientdet/Det-AdvProp.md