IET Image Processing (Jun 2023)

A novel shape classification method using 1‐D convolutional neural networks

  • Xun Zhang,
  • Jingxian Liu,
  • Yalu Zheng,
  • Yan Zheng,
  • Masroor Hussain

DOI
https://doi.org/10.1049/ipr2.12809
Journal volume & issue
Vol. 17, no. 8
pp. 2467 – 2474

Abstract

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Abstract Most of the shape classification methods are based on a single closed contour. However, practical shapes always have complex contours, for example, a combination of multiple open contours. How to accurately identify complex shapes is an unsolved problem. In this research, a novel method is proposed to classify complex shapes. The proposed method firstly encodes a complex shape to an angle code and a sparsity code, then input these codes to a 1‐D CNN for extracting features and classification. Experiments on two datasets show this novel method is superior in terms of classification accuracy. These two datasets are practical shape dataset collected by this paper on internet and MPEG‐7 CE‐1 Part B. The proposed method achieves higher classification accuracy than compared methods. In order to show the performance of the proposed method on each class, the accuracy on each class is analyzed. Ablation experiment is conducted to show the contribution of each module in the network. The result shows that each module is meaningful in the network, because without any module the accuracy drops.

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