Remote Sensing (Mar 2021)

A Method of Segmenting Apples Based on Gray-Centered RGB Color Space

  • Pan Fan,
  • Guodong Lang,
  • Bin Yan,
  • Xiaoyan Lei,
  • Pengju Guo,
  • Zhijie Liu,
  • Fuzeng Yang

DOI
https://doi.org/10.3390/rs13061211
Journal volume & issue
Vol. 13, no. 6
p. 1211

Abstract

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In recent years, many agriculture-related problems have been evaluated with the integration of artificial intelligence techniques and remote sensing systems. The rapid and accurate identification of apple targets in an illuminated and unstructured natural orchard is still a key challenge for the picking robot’s vision system. In this paper, by combining local image features and color information, we propose a pixel patch segmentation method based on gray-centered red–green–blue (RGB) color space to address this issue. Different from the existing methods, this method presents a novel color feature selection method that accounts for the influence of illumination and shadow in apple images. By exploring both color features and local variation in apple images, the proposed method could effectively distinguish the apple fruit pixels from other pixels. Compared with the classical segmentation methods and conventional clustering algorithms as well as the popular deep-learning segmentation algorithms, the proposed method can segment apple images more accurately and effectively. The proposed method was tested on 180 apple images. It offered an average accuracy rate of 99.26%, recall rate of 98.69%, false positive rate of 0.06%, and false negative rate of 1.44%. Experimental results demonstrate the outstanding performance of the proposed method.

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