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Shadow detection and removal in apple image segmentation under natural light conditions using an ultrametric contour map

机译:使用超空调地图在自然光线条件下苹果图像分割中的阴影检测和移除

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The image segmentation technique is a vital component of vision-based fruit harvesting robots because the accuracy of this technique greatly affects the recognition and identification by robots. However, the uncertainty and ambiguity of natural scenes in orchards make image segmentation a challenging task. Here, we developed a new algorithm to detect and remove the shadows generated under intense illumination and direct sunlight conditions. Group pixels and edge probability maps were fused in our algorithm to generate superpixel blocks with precise boundaries. We applied an affinity matrix to obtain an ultrametric contour map to detect shadows and then used a relighting method to remove the detected shadows. Additionally, the shadow detection and removal and image segmentation procedures were evaluated. Our shadow detection results showed that the root mean square error decreased from 7.9% to 6.4% when an edge probability map was applied. Using the new shadow removal algorithm, the precision, balanced accuracy, specificity, and modified segmentation accuracy were improved by 10, 11, 4.5, and 10.1%, respectively. The average segmentation processing time was 0.59 s, which meets the requirements of real-time applications (a1 s) We conclude that the segmentation algorithm that was developed with shadow detection and removal exhibits strong robustness in detecting apples in orchards under natural light conditions. (C) 2019 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:图像分割技术是基于视觉的水果收获机器人的重要组成部分,因为该技术的准确性极大地影响了机器人的识别和识别。然而,果园里的自然场景的不确定性和歧义使图像分割成为一个具有挑战性的任务。在这里,我们开发了一种新的算法来检测和移除在激烈的照明和直接阳光条件下产生的阴影。小组像素和边缘概率图在我们的算法中融合,以生成具有精确边界的Superpixel块。我们应用了一个亲和矩阵以获得超空调图,以检测阴影,然后使用致密方法去除检测到的阴影。另外,评估阴影检测和移除和图像分割程序。我们的影子检测结果表明,当应用边缘概率图时,根均方误差从7.9%降低到6.4%。使用新的阴影清除算法,精度,平衡精度,特异性和改性分割精度分别提高10,11,4.5和10.1%。平均分割处理时间为0.59秒,其符合实时应用的要求(& a1 s),我们得出结论,使用暗影检测和拆卸开发的分割算法在自然光线下检测果园中的苹果方面具有强大的稳健性。 (c)2019年IAGRE。 elsevier有限公司出版。保留所有权利。

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