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首页> 外文期刊>IEEE transactions on automation science and engineering >Effects of Classification Methods on Color-Based Feature Detection With Food Processing Applications
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Effects of Classification Methods on Color-Based Feature Detection With Food Processing Applications

机译:分类方法对食品加工中基于颜色的特征检测的影响

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摘要

Color information is useful in vision-based feature detection, particularly for food processing applications where color variability often renders grayscale-based machine-vision algorithms that are difficult or impossible to work with. This paper presents a color machine vision algorithm that consists of two components. The first creates an artificial color contrast as a prefilter that aims at highlighting the target while suppressing its surroundings. The second, referred to here as the statistically based fast bounded box (SFBB), utilizes the principal component analysis technique to characterize target features in color space from a set of training data so that the color classification can be performed accurately and efficiently. We evaluate the algorithm in the context of food processing applications and examine the effects of the color characterization on computational efficiency by comparing the proposed solution against two commonly used color classification algorithms; a neural-network classifier and the support vector machine. Comparison among the three methods demonstrates that statistically based fast bounded box is relatively easy to train, efficient, and effective since with sufficient training data, it does not require any additional optimization steps; these advantages make SFBB an ideal candidate for high-speed automation involving live and/or natural objects. Note to Practitioners-Variability in natural objects is usually several orders of magnitude higher than that for manufactured goods and has remained a challenge. As a result, most solutions to inspection problems of natural products today still have humans in the loop. One of the factors influencing the success rate of color machine vision in detecting a target is its ability to characterize colors. When unrelated features are very close to the target in the color space, which may not pose a significant problem to an experienced operator, they appear as noise and often result in false detection-. This paper illustrates the applicability of the algorithm with a number of representative automation problems in the context of food processing applications. As demonstrated experimentally, the artificial color contrast and statistically based fast bounded box methods can significantly improve the success rate of the detection by reducing the standard deviation of both the target and noise pixels, enlarging the separation between feature clusters in color space, and more tightly characterize the feature color from its background. The algorithm presented here has several advantages, including simplicity in training and fast classification, since only three simple checks of rectangular bounds are performed
机译:颜色信息在基于视觉的特征检测中很有用,尤其是对于食品加工应用,在这些应用中,颜色变化通常会导致难以使用或无法使用的基于灰度的机器视觉算法。本文提出了一种由两个组件组成的彩色机器视觉算法。第一种创建人工色彩对比作为预过滤器,旨在突出目标同时抑制其周围环境。第二种方法在这里称为基于统计的快速边界框(SFBB),它利用主成分分析技术从一组训练数据中表征颜色空间中的目标特征,从而可以准确,高效地进行颜色分类。我们在食品加工应用的背景下评估该算法,并通过将所提出的解决方案与两种常用的颜色分类算法进行比较,来检查颜色表征对计算效率的影响;神经网络分类器和支持向量机。三种方法之间的比较表明,基于统计的快速有界盒相对容易训练,高效且有效,因为有了足够的训练数据,它不需要任何其他优化步骤。这些优势使SFBB成为涉及生命和/或自然物体的高速自动化的理想候选者。从业人员注意-天然物品的可变性通常比制成品的高几个数量级,并且仍然是一个挑战。结果,当今解决天然产品检查问题的大多数解决方案仍然存在人员问题。影响彩色机器视觉检测目标成功率的因素之一是其表征颜色的能力。当不相关的特征非常靠近色彩空间中的目标时(这可能不会对有经验的操作员造成重大问题),它们会显示为噪音并经常导致错误的检测。本文说明了该算法在食品加工应用中具有许多代表性自动化问题的适用性。如实验所示,通过减少目标像素和噪声像素的标准偏差,扩大色彩空间中的特征簇之间的距离以及更紧密地结合,人工颜色对比和基于统计的快速边界框方法可以显着提高检测成功率。从其背景表征特征颜色。此处介绍的算法具有多个优点,包括训练简单和快速分类,因为仅执行了三个简单的矩形边界检查

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