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Rethinking Separable Convolutional Encoders for End-to-End Semantic Image Segmentation

Author

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  • Lin Wang
  • Xingfu Wang
  • Ammar Hawbani
  • Yan Xiong
  • Xu Zhang

Abstract

With the development of science and technology, the middle volume and neural network in the semantic image segmentation of the codec show good development prospects. Its advantage is that it can extract richer semantic features, but this will cause high costs. In order to solve this problem, this article mainly introduces the codec based on a separable convolutional neural network for semantic image segmentation. This article proposes a codec based on a separable convolutional neural network for semantic image segmentation research methods, including the traditional convolutional neural network hierarchy into a separable convolutional neural network, which can reduce the cost of image data segmentation and improve processing efficiency. Moreover, this article builds a separable convolutional neural network codec structure and designs a semantic segmentation process, so that the codec based on a separable convolutional neural network is used for semantic image segmentation research experiments. The experimental results show that the average improvement of the dataset by the improved codec is 0.01, which proves the effectiveness of the improved SegProNet. The smaller the number of training set samples, the more obvious the performance improvement.

Suggested Citation

  • Lin Wang & Xingfu Wang & Ammar Hawbani & Yan Xiong & Xu Zhang, 2021. "Rethinking Separable Convolutional Encoders for End-to-End Semantic Image Segmentation," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-12, April.
  • Handle: RePEc:hin:jnlmpe:5566691
    DOI: 10.1155/2021/5566691
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