Relay Backpropagation for Effective Learning of Deep Convolutional Neural Networks
About
Learning deeper convolutional neural networks becomes a tendency in recent years. However, many empirical evidences suggest that performance improvement cannot be gained by simply stacking more layers. In this paper, we consider the issue from an information theoretical perspective, and propose a novel method Relay Backpropagation, that encourages the propagation of effective information through the network in training stage. By virtue of the method, we achieved the first place in ILSVRC 2015 Scene Classification Challenge. Extensive experiments on two challenging large scale datasets demonstrate the effectiveness of our method is not restricted to a specific dataset or network architecture. Our models will be available to the research community later.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object Detection | LVIS v0.5 (val) | -- | 61 | |
| Instance Segmentation | LVIS 0.5 (val) | APr7.3 | 58 | |
| Trajectory Prediction | ETH-UCY | -- | 57 | |
| Multi-Label Classification | VOC-MLT (test) | Total mAP75.38 | 34 | |
| Long-Tailed Multi-Label Visual Recognition | COCO Long-Tailed (test) | mAP Total46.97 | 21 | |
| Long-tailed classification | Lesion-10 (test) | Accuracy (Head)81.42 | 14 | |
| Long-tailed classification | Disease-48 (test) | Accuracy (Head)55.57 | 14 | |
| Multi-Label Classification | COCO-MLT (test) | mAP (Overall)46.97 | 13 | |
| Object Detection | OID19 v5 (val) | AP56.5 | 11 | |
| Trajectory Prediction | ETH-UCY Top 1% hard tail samples | minADE0.9 | 8 |