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Decision-Tree Based Pixel Classification for Real-time Citrus Segmentation on FPGA

机译:FPGA上基于决策树的实时柑橘分割像素分类

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According to Food and Agriculture Organization, Mexico is one of the top five citrus producers in the world. In order to achieve the required quality control to export their products, citrus producers require sorting machines able to classify millions of fruits according to certain characteristics, as their size and color. Computer vision provides image processing tools, as image segmentation, that could be used as first stage in a classification process. Fruit classification must be fast in order to be able to process as much fruits per second as possible. In this paper, an FPGA architecture for image segmentation of orange images based on decision-tree models is proposed. A decision-tree model is proposed as an alternative to global thresholding and adaptive thresholding algorithms. It was observed that in this scenario, global thresholding fails due to the noise produced by the fast moving fruits in a classification line, and adaptive thresholding algorithms are not suitable for real-time applications, because of their high requirements in computing power and memory. A decision-tree model requires less hardware compared to both algorithms. The proposed model can achieve real-time segmentation because it is based on pixel serialization, and not on pixel neighborhood processing. The proposed architecture was implemented in a Spartan-6 FPGA. It runs at 60 fps and attains an accuracy of 97.1% of correct segmented pixels, compared to an offline manual segmentation of the frames.
机译:根据粮食及农业组织的统计,墨西哥是世界上柑橘产量排名前五的国家之一。为了实现出口产品所需的质量控制,柑桔生产者需要能够根据某些特性将数百万种水果分类为大小和颜色的分选机。计算机视觉提供了图像处理工具,作为图像分割,可以用作分类过程的第一阶段。水果分类必须快速,以便能够每秒处理尽可能多的水果。本文提出了一种基于决策树模型的橙色图像图像分割FPGA架构。提出了一种决策树模型,作为全局阈值和自适应阈值算法的替代方案。可以看出,在这种情况下,全局阈值处理由于归类行中快速移动的水果所产生的噪声而失败,并且自适应阈值处理算法由于对计算能力和内存的高要求而不适用于实时应用。与两种算法相比,决策树模型所需的硬件更少。所提出的模型可以实现实时分割,因为它基于像素序列化,而不是基于像素邻域处理。所提出的体系结构是在Spartan-6 FPGA中实现的。与离线手动分割帧相比,它以60 fps的速度运行,可达到正确分割像素的97.1%的精度。

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