2021
DOI: 10.48550/arxiv.2107.02547
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Energy-Efficient Accelerator Design for Deformable Convolution Networks

Dawen Xu,
Cheng Chu,
Cheng Liu
et al.

Abstract: Deformable convolution networks (DCNs) proposed to address the image recognition with geometric or photometric variations typically involve deformable convolution that convolves on arbitrary locations of input features. The locations change with different inputs and induce considerable dynamic and irregular memory accesses which cannot be handled by classic neural network accelerators (NNAs). Moreover, bilinear interpolation (BLI) operation that is required to obtain deformed features in DCNs also cannot be de… Show more

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