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Localisation of litchi in an unstructured environment using binocular stereo vision

机译:使用双目立体视觉在非结构化环境中对荔枝的定位

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The major constraints for a litchi harvesting robot were to recognise and locate litchi in an unstructured environment with varying illumination and random occlusion. A rapid and reliable method based on binocular stereo vision was developed with the aim of effectively recognising and locating litchi in the natural environment. The method involved the application of wavelet transform to a pair acquired images of litchi to normalise illumination of an object surface. A litchi recognition algorithm based on K-means clustering was presented to separate litchi from leaves, branches and background. A matching algorithm to locate litchi based on a label template was discussed. Litchis with a similar label template were matched according to the preset threshold by traversing a litchi label template of a left image in a right image to find optimal matching. The experimental results showed that the proposed recognition method could be robust against the influences of varying illumination and precisely recognising litchi, the highest average recognition rate for unoccluded and partially occluded litchi was 98.8% and 97.5% respectively. From 100 pairs of tested images of unoccluded and partially occluded litchis 98% and 94% were successfully matched, respectively. Errors had no significant difference and they were less than 15 mm when the measuring distance was between 300 mm and 1600 mm under varying illumination and partially occluded conditions. (C) 2016 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:荔枝收获机器人的主要限制是在光照变化和随机遮挡的非结构化环境中识别和定位荔枝。为了有效地识别和定位自然环境中的荔枝,开发了一种基于双目立体视觉的快速可靠的方法。该方法涉及将小波变换应用于荔枝的一对采集图像,以标准化对象表面的照明。提出了一种基于K-均值聚类的荔枝识别算法,将荔枝从叶,枝和背景中分离出来。讨论了基于标签模板的荔枝定位匹配算法。通过遍历右图像中左图像的荔枝标记模板以根据最佳阈值匹配具有相似标签模板的荔枝。实验结果表明,所提出的识别方法对光照变化和准确识别荔枝具有较强的鲁棒性,未遮挡和部分遮挡的荔枝平均识别率最高,分别为98.8%和97.5%。从100对未遮盖和部分遮盖的荔枝的测试图像中,分别成功匹配了98%和94%的荔枝。在变化的光照和部分遮挡的条件下,当测量距离在300 mm至1600 mm之间时,误差没有明显差异,并且小于15 mm。 (C)2016年。由Elsevier Ltd.出版。保留所有权利。

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