Resolution Adaptive Networks for Efficient Inference
- URL: http://arxiv.org/abs/2003.07326v5
- Date: Mon, 18 May 2020 04:49:11 GMT
- Title: Resolution Adaptive Networks for Efficient Inference
- Authors: Le Yang, Yizeng Han, Xi Chen, Shiji Song, Jifeng Dai, Gao Huang
- Abstract summary: We propose a novel Resolution Adaptive Network (RANet), which is inspired by the intuition that low-resolution representations are sufficient for classifying "easy" inputs.
In RANet, the input images are first routed to a lightweight sub-network that efficiently extracts low-resolution representations.
High-resolution paths in the network maintain the capability to recognize the "hard" samples.
- Score: 53.04907454606711
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Adaptive inference is an effective mechanism to achieve a dynamic tradeoff
between accuracy and computational cost in deep networks. Existing works mainly
exploit architecture redundancy in network depth or width. In this paper, we
focus on spatial redundancy of input samples and propose a novel Resolution
Adaptive Network (RANet), which is inspired by the intuition that
low-resolution representations are sufficient for classifying "easy" inputs
containing large objects with prototypical features, while only some "hard"
samples need spatially detailed information. In RANet, the input images are
first routed to a lightweight sub-network that efficiently extracts
low-resolution representations, and those samples with high prediction
confidence will exit early from the network without being further processed.
Meanwhile, high-resolution paths in the network maintain the capability to
recognize the "hard" samples. Therefore, RANet can effectively reduce the
spatial redundancy involved in inferring high-resolution inputs. Empirically,
we demonstrate the effectiveness of the proposed RANet on the CIFAR-10,
CIFAR-100 and ImageNet datasets in both the anytime prediction setting and the
budgeted batch classification setting.
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