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Segmentation of foreground apple targets by fusing visual attention mechanism and growth rules of seed points

机译:融合视觉注意机制和种子点生长规律对前景苹果目标进行分割

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摘要

Accurate segmentation of apple targets is one of the most important problems to be solved in the vision system of apple picking robots. This work aimed to solve the difficulties that background targets often bring to foreground targets segmentation, by fusing the visual attention mechanism and the growth rule of seed points. Background targets could be eliminated by extracting the ROI (region of interest) of apple targets; the ROI was roughly segmented on the HSV color space, and then each of the pixels was used as a seed growing point. The growth rule of the seed points was adopted to obtain the whole area of apple targets from seed growing points. The proposed method was tested with 20 images captured in a natural scene, including 54 foreground apple targets and approximately 84 background apple targets. Experimental results showed that the proposed method can remove background targets and focus on foreground targets, while the k-means algorithm and the chromatic aberration algorithm cannot. Additionally, its average segmentation error rate was 13.23%, which is 2.71% higher than that of the k-means algorithm and 2.95% lower than that of the chromatic aberration algorithm. In conclusion, the proposed method contributes to the vision system of apple-picking robots to locate foreground apple targets quickly and accurately under a natural scene.
机译:苹果目标的准确分割是苹果采摘机器人视觉系统要解决的最重要问题之一。这项工作旨在通过融合视觉注意机制和种子点的生长规则来解决背景目标经常给前景目标分割带来的困难。可以通过提取苹果目标的ROI(感兴趣区域)来消除背景目标。 ROI在HSV颜色空间上大致进行了细分,然后将每个像素用作种子生长点。采用种子点的生长规律,从种子生长点得到苹果靶的整个面积。使用自然场景中捕获的20张图像测试了该方法,其中包括54个前景苹果目标和大约84个背景苹果目标。实验结果表明,该方法能够去除背景目标并聚焦于前景目标,而k均值算法和色差算法则不能。此外,其平均分割错误率为13.23%,比k-means算法高2.71%,比色差算法低2.95%。总之,该方法有助于苹果采摘机器人的视觉系统在自然场景下快速,准确地定位前景苹果目标。

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