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Data-oriented Scene Recognition

2021-09-29Unverified0· sign in to hype

Zhinan Qiao, Xiaohui Yuan, Chaoning Zhang, Jianfang Shi, Jian Xia

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Abstract

Most deep learning backbones are evaluated on ImageNet. Using scenery images as an example, we conducted extensive experiments to demonstrate the widely accepted principles in network design may result in dramatic performance differences when the data is altered. Exploratory experiments are engaged to explain the underlining cause of the differences. Based on our observation, this paper presents a novel network design methodology: data-oriented network design. In other words, instead of designing universal backbones, the scheming of the networks should treat the characteristics of data as a crucial component. We further proposed a Deep-Narrow Network and Lossless Pooling module, which improved the scene recognition performance using less than half of the computational resources compared to the benchmark network architecture ResNets.

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