基于颜色的模糊HSV推理对象分类模型

A. Al-hetar, M. Rassam, Osama Shormani, A. A. Salem, Huthifa Al-Yousofi
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引用次数: 2

摘要

颜色是物体最容易识别的属性之一,需要检测的颜色范围很广。在RGB色彩空间中捕获的图像由于其亮度、饱和度和色彩光谱的立方形状,很难从中提取三种以上的颜色。本文提出了一种利用HSV颜色空间的基于颜色的对象分类模型。该过程首先将RGB空间转换为三个主要组件,色相(颜色的波长),饱和度(颜色的纯度)和值(灰度级或亮度)。不幸的是,由于每种颜色之间的梯度,色相在应用颜色分类时导致某种模糊。为此,采用色调模糊集对图像中的颜色进行分类。它们被用来识别九种不同物体的颜色,并将它们归类为九种常见的纯色。然后由PUMA 560机器人根据模糊集提取的颜色在九个不同的轨迹上进行分类过程。为了对明暗目标进行光照,并将其放入不需要的目标的第十次轨迹中,我们将饱和度和值修改为模糊集。该系统进行了模拟、测试,并证明了其在正常或高度结构化光设置环境中检测彩色物体的有效性,因为它们的梯度和变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color-based Object Categorization Model Using Fuzzy HSV Inference System
Color is one of the most identifiable properties of objects and wide range of colors need to be detected. Images captured in RGB color space are hard to extract more than three colors from them due to their cubic shape of merging luminance, saturation, and color spectrum. This paper presents a color-based Object Categorization model that utilizes the HSV color space. The process starts by converting the RGB space into three main components, Hue (wavelength of colors), Saturation (purity of colors), and Value (grayness level or lightness), Unfortunately, Hue causes some sort of fogginess when color classification is applied, due to the gradient between each color. For that, the hue fuzzy sets are used which categorize colors in images. They are used to identify nine deferent object's color and categorize them into the nine common pure colors. The categorization process is then carried out by a PUMA 560 robot in nine different trajectories based on the colors extracted by the fuzzy sets. In order to illuminate bright and dark objects and putting them into the tenth trajectory of the unwanted objects, we modified the saturation and value as fuzzy sets. The system is simulated, tested and proved its effectiveness in detecting colored objects due to their gradient and variations for environments with normal or highly structured light settings, using medium or high-resolution camera.
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