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Papers/Neural Architecture Search for Lightweight Non-Local Netwo...

Neural Architecture Search for Lightweight Non-Local Networks

Yingwei Li, Xiaojie Jin, Jieru Mei, Xiaochen Lian, Linjie Yang, Cihang Xie, Qihang Yu, Yuyin Zhou, Song Bai, Alan Yuille

2020-04-04CVPR 2020 6Image ClassificationNeural Architecture Search
PaperPDFCode(official)Code

Abstract

Non-Local (NL) blocks have been widely studied in various vision tasks. However, it has been rarely explored to embed the NL blocks in mobile neural networks, mainly due to the following challenges: 1) NL blocks generally have heavy computation cost which makes it difficult to be applied in applications where computational resources are limited, and 2) it is an open problem to discover an optimal configuration to embed NL blocks into mobile neural networks. We propose AutoNL to overcome the above two obstacles. Firstly, we propose a Lightweight Non-Local (LightNL) block by squeezing the transformation operations and incorporating compact features. With the novel design choices, the proposed LightNL block is 400x computationally cheaper} than its conventional counterpart without sacrificing the performance. Secondly, by relaxing the structure of the LightNL block to be differentiable during training, we propose an efficient neural architecture search algorithm to learn an optimal configuration of LightNL blocks in an end-to-end manner. Notably, using only 32 GPU hours, the searched AutoNL model achieves 77.7% top-1 accuracy on ImageNet under a typical mobile setting (350M FLOPs), significantly outperforming previous mobile models including MobileNetV2 (+5.7%), FBNet (+2.8%) and MnasNet (+2.1%). Code and models are available at https://github.com/LiYingwei/AutoNL.

Results

TaskDatasetMetricValueModel
Neural Architecture SearchImageNetAccuracy77.7AutoNL-L
Neural Architecture SearchImageNetTop-1 Error Rate22.3AutoNL-L
Neural Architecture SearchImageNetAccuracy76.5AutoNL-S
Neural Architecture SearchImageNetTop-1 Error Rate23.5AutoNL-S
AutoMLImageNetAccuracy77.7AutoNL-L
AutoMLImageNetTop-1 Error Rate22.3AutoNL-L
AutoMLImageNetAccuracy76.5AutoNL-S
AutoMLImageNetTop-1 Error Rate23.5AutoNL-S

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