CVLGApr 22, 2020

DyNet: Dynamic Convolution for Accelerating Convolutional Neural Networks

arXiv:2004.10694v1105 citations
AI Analysis

This addresses efficiency and performance issues in convolutional neural networks for computer vision tasks, representing a novel method rather than an incremental improvement.

The paper tackles redundancy in convolution kernels by proposing dynamic convolution to adaptively generate kernels based on image content, resulting in significant reductions in FLOPs (e.g., up to 71.3% for ResNet50 without accuracy loss) and performance boosts (e.g., up to 2.9% Top-1 accuracy improvement on ImageNet).

Convolution operator is the core of convolutional neural networks (CNNs) and occupies the most computation cost. To make CNNs more efficient, many methods have been proposed to either design lightweight networks or compress models. Although some efficient network structures have been proposed, such as MobileNet or ShuffleNet, we find that there still exists redundant information between convolution kernels. To address this issue, we propose a novel dynamic convolution method to adaptively generate convolution kernels based on image contents. To demonstrate the effectiveness, we apply dynamic convolution on multiple state-of-the-art CNNs. On one hand, we can reduce the computation cost remarkably while maintaining the performance. For ShuffleNetV2/MobileNetV2/ResNet18/ResNet50, DyNet can reduce 37.0/54.7/67.2/71.3% FLOPs without loss of accuracy. On the other hand, the performance can be largely boosted if the computation cost is maintained. Based on the architecture MobileNetV3-Small/Large, DyNet achieves 70.3/77.1% Top-1 accuracy on ImageNet with an improvement of 2.9/1.9%. To verify the scalability, we also apply DyNet on segmentation task, the results show that DyNet can reduce 69.3% FLOPs while maintaining Mean IoU on segmentation task.

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