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Histogram-based automatic thresholding for bruise detection of apples by structured-illumination reflectance imaging

机译:通过结构照明反射成像苹果的瘀伤检测的基于直方图的自动阈值

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Thresholding is an important step in the segmentation of image features, and the existing methods are not all effective when the image histogram exhibits a unimodal pattern, which is common in defect detection of fruit. This study was aimed at developing a general automatic thresholding methodology for fast and effective segmentation of bruises from the images acquired by structured-illumination reflectance imaging (SIRI). SIRI images, under sinusoidal patterns of illumination at a spatial frequency of 100 cycles m(-1), were acquired from 120 apple samples of four varieties with artificially created bruises and from another 40 apples with naturally occurred bruises. Subsequently, three sets of images, i.e., amplitude component (AC), direct component (DC) and ratio (i.e., dividing AC by DC), were derived from the original SIRI images. A unimodal thresholding method, called UNIMODE, was first applied to DC images for background removal, and then nine automatic thresholding techniques, including one unimodal and eight bimodal, were applied to the ratio images for bruise segmentation. It was found that severe over-segmentation occurred when using the bimodal thresholding methods, and this problem was mitigated by confining threshold selection to the lower part of the histogram that contained bruise information. Three bimodal thresholding techniques, i.e., INTERMODE (histogram valley emphasized), RIDLER (iterative thresholding), OTSU (clustering based) achieved the best bruise detection results with the overall accuracies of more than 90%. The overall detection results were further improved by integrating these techniques with the unimodal thresholding, due to reductions in the false positive error. The three bimodal thresholding techniques resulted in overall detection accuracies of 77-85% for naturally occurred bruises. This study has showed that the proposed automatic thresholding methodology provides a simple and effective tool for bruise detection of apples. Published by Elsevier Ltd on behalf of IAgrE.
机译:阈值化是图像特征分割的一个重要步骤,并且当图像直方图表现出一种单峰模式时,现有方法并不是全部有效的,这在缺陷检测果实中是常见的。该研究旨在开发一种来自由结构照明反射成像(SIRI)获取的图像的快速有效分割的一般自动阈值方法。 Siri图像在100个循环M(-1)的空间频率下的窦形照明模式下,从120个品种的苹果样品中获取,具有人工产生的瘀伤,并从另一个40个苹果,自然发生的瘀伤。随后,来自原始SIRI图像的三组图像,即幅度分量(AC),直接组分(DC)和比率(即,除去AC)。首先将称为单变的单模阈值化方法应用于DC图像以进行背景去除,然后将九个自动阈值化技术(包括一个单峰和八个双峰)应用于用于瘀伤分割的比率图像。发现使用双峰阈值处理方法时发生严重的过分分割,并且通过将阈值选择限制到包含瘀伤信息的直方图的下部来减轻该问题。三个双峰阈值技术,即,Intermode(直方图谷强调),Ridler(迭代阈值),OTSU(基于聚类)实现了最佳的瘀伤检测结果,整体精度超过90%。通过将这些技术与单峰阈值相同,通过在误报中减少来进一步改善整体检测结果。三种双峰阈值化技术导致全面检测精度为77-85%,适用于天然瘀伤。本研究表明,所提出的自动阈值化方法提供了一种简单有效的饮料检测苹果的工具。 elsevier有限公司代表IAGRE出版。

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