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Automatic image segmentation using sobel operator and k-means clustering: A case study in volume measurement system for food products

机译:使用sobel算子和k-means聚类的自动图像分割:食品体积测量系统中的案例研究

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Image segmentation is one of important step in visual inspection of food product using computer vision system. However, segmentation of food product image is not easily performed if the image has low contrast with its background or the background in acquired image is not homogeneous. This paper proposes k-means clustering combined with Sobel operator for automatic food product image segmentation. Sobel operator was used to determine region of interest (ROI) and k-means clustering was then employed to separate object and background in ROI. The area outside ROI was considered as background. The proposed method has been validated using 100 images of food product from ten different types. The validation results show that the proposed segmentation method achieves good segmentation result.
机译:图像分割是使用计算机视觉系统对食品进行视觉检查的重要步骤之一。但是,如果图像与背景的对比度较低或者所获取图像中的背景不均匀,则不容易对食品图像进行分割。本文提出结合Sobel算子的k均值聚类算法对食品图像进行自动分割。使用Sobel算子确定感兴趣区域(ROI),然后采用k均值聚类分离ROI中的对象和背景。 ROI以外的区域被视为背景。所提出的方法已使用来自十种不同类型的食品的100张图像进行了验证。验证结果表明,该分割方法取得了较好的分割效果。

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