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Research on Multi-class Fruits Recognition Based on Machine Vision and SVM

机译:基于机器视觉和支持向量机的多类水果识别研究

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Picking fruit using by machine is an important research direction to liberate labor force and the first step of automatic picking is to recognize fruit. In order to improve the adaptability and reduce the cost of fruit picking robot, it is necessary to recognize multi-class fruit. In this paper, the recognition of multi-class fruit was studied with 6 kinds of fruit, such as apple, banana, citrus, carambola, pear, pitaya and so on. Firstly, the obtained fruit images were processed with Gaussian filter, histogram equalization and other image preprocessing. Secondly, the Otsu segmentation algorithm was used to segment the fruit image, and the edge of the image is extracted by the Canny edge detection operator. Thirdly, the shape invariant moment and other methods were used to synthesize the color and shape characteristics of the fruit to extract feature. Finally, the SVM classifier was applied to classify and recognize fruits according to the extracted feature vectors. The results showed that the recognition rate of 6 fruits, such as apples, bananas, citrus, carambola, pear and pitaya, were 95%, 80%, 97.5%, 86.7%, 92.5% and 96.7%, which could meet the needs of the fruit picking robot and lay the foundation for picking multi-class fruit by the picking robot.
机译:机械采摘水果是解放劳动力的重要研究方向,而自动采摘的第一步就是识别水果。为了提高适应性并降低采摘机器人的成本,有必要识别多类水果。本文利用苹果,香蕉,柑桔,杨桃,梨,火龙果等6种水果对多类水果的识别进行了研究。首先,对所获得的水果图像进行高斯滤波,直方图均衡化等图像预处理。其次,使用Otsu分割算法对水果图像进行分割,然后由Canny边缘检测算子提取图像的边缘。第三,采用形状不变矩等方法综合了果实的颜色和形状特征,提取特征。最后,将SVM分类器根据提取的特征向量对水果进行分类和识别。结果表明,苹果,香蕉,柑桔,杨桃,梨,火龙果等6种水果的识别率分别为95%,80%,97.5%,86.7%,92.5%和96.7%,可以满足食品加工的需要。水果采摘机器人,为采摘机器人采摘多类水果打下基础。

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