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Robust Tomato Recognition for Robotic Harvesting Using Feature Images Fusion

机译:利用特征图像融合进行机器人收获的鲁棒番茄识别

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摘要

Automatic recognition of mature fruits in a complex agricultural environment is still a challenge for an autonomous harvesting robot due to various disturbances existing in the background of the image. The bottleneck to robust fruit recognition is reducing influence from two main disturbances: illumination and overlapping. In order to recognize the tomato in the tree canopy using a low-cost camera, a robust tomato recognition algorithm based on multiple feature images and image fusion was studied in this paper. Firstly, two novel feature images, the  a*-component image and the I-component image, were extracted from the L*a*b* color space and luminance, in-phase, quadrature-phase (YIQ) color space, respectively. Secondly, wavelet transformation was adopted to fuse the two feature images at the pixel level, which combined the feature information of the two source images. Thirdly, in order to segment the target tomato from the background, an adaptive threshold algorithm was used to get the optimal threshold. The final segmentation result was processed by morphology operation to reduce a small amount of noise. In the detection tests, 93% target tomatoes were recognized out of 200 overall samples. It indicates that the proposed tomato recognition method is available for robotic tomato harvesting in the uncontrolled environment with low cost.
机译:由于图像背景中存在各种干扰,因此在复杂的农业环境中自动识别成熟水果仍然是自动收割机器人面临的挑战。可靠的水果识别的瓶颈在于减少来自两个主要干扰的影响:照明和重叠。为了利用低成本相机识别树冠层中的番茄,本文研究了一种基于多特征图像和图像融合的鲁棒番茄识别算法。首先,分别从L * a * b *颜色空间和亮度,同相,正交相(YIQ)颜色空间中提取了两个新颖的特征图像,即a *分量图像和I分量图像。其次,采用小波变换在像素水平上融合两个特征图像,将两个源图像的特征信息结合在一起。第三,为了从背景中分割目标番茄,使用自适应阈值算法来获得最佳阈值。通过形态学运算处理最终的分割结果,以减少少量噪声。在检测测试中,在200个总样本中识别出93%的目标西红柿。这表明所提出的番茄识别方法可用于在不受控制的环境中以低成本进行自动番茄收获。

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