Fusion for Tile-based Deconvolution Layers

  • Jeong, Min-Wu
  • Rhee, Chae Eun
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초록

Recently, various deep learning accelerators are being studied through data flow structure improvement and memory access optimization. Among them, the encoder-decoder model is widely used in object detection and semantic segmentation showing good performance. However, due to the deconvolution operation that outputs a high-resolution feature map from the decoder, the memory access and computational complexity are higher than that of the existing encoder-only structure. Thus, it is a big obstacle to the implementation of encoder-decoder accelerators. Most of the previous studies have focused only on the encoder part. This paper attempts to apply the fusion approach, which was effective for the convolution layer of the encoder, to the deconvolution of the decoder and shows the possibility of reducing the processing time and hardware complexity.

키워드

Fused LayerCross LayerSparsityConvolutional Neural Network AcceleratorTile-Based Deconvolution
제목
Fusion for Tile-based Deconvolution Layers
저자
Jeong, Min-WuRhee, Chae Eun
DOI
10.1109/ISOCC53507.2021.9613947
발행일
2021
유형
Proceedings Paper
저널명
18TH INTERNATIONAL SOC DESIGN CONFERENCE 2021 (ISOCC 2021)
페이지
423 ~ 424