基于多部分切割和灰度直方图的图像相似度搜索

Sofyan Pariyasto, Kusrini Kusrini, H. Fatta
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引用次数: 0

摘要

信息技术在日常生活中的应用持续快速增长。这离不开研究人员的作用,尤其是在信息技术领域。信息技术已成为一种必需品,因此它被广泛应用于教育、贸易、畜牧业甚至农业部门。需要克服的障碍之一是检查涉及信息系统的所有活动,特别是当有图像形式的数据时。出现的问题通常需要人类来检查和分类已经由人类执行的项目。这是这项研究的背景,以帮助减少涉及人类的活动。计算机视觉中寻找图像相似性的过程可以应用于教育、零售等多个领域。在计算机视觉教育领域可以通过人脸识别来进行自动缺席处理,在零售领域可以通过物体检测来进行分类。查找作为查询和数据集图像的图像之间的相似性的过程将是研究的主题,并且计算查询和数据集之间的相似性的过程将逐步讨论。在搜索过程中使用的方法是通过计算查询图像与数据集之间的最短距离。所采取的步骤是提取特征,然后是RGB到灰色的颜色转换。下一阶段是将图像切割成四部分,然后计算隐蔽点的距离。最后部分将使用矩阵混淆法计算算法的性能,使测试结果以错误率、精密度和准确度的形式呈现。试验过程使用了1000个数据集中的30个数据。在测试结果中获得的信息形式为召回率为1,正确率为0.66,精密度为0.66。关键词:图像相似度;直方图;灰度;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Similarity Searching Use Multi Part Cutting And Grayscale Color Histogram
The use of information technology in everyday life continues to increase so rapidly. This is inseparable from the role of researchers, especially in the field of information technology. Information technology has become a necessity so that it is widely used in the fields of education, trade, livestock and even to the agricultural sector. One of the obstacles that is needed is to check all activities involving information systems, especially when there is data in the form of images. Problems that arise are usually needed by humans to check and sort items that have been carried out by humans. This is the background of this research to help reduce activities involving humans. The process of finding the similarity of images in computer vision can be used in several fields such as education, retail, and other fields. In the field of computer vision education can be utilized for the automatic absence process through face recognition, in terms of retailing, it can be used for sorting through object detection. The process of finding similarities between images that are queries and dataset images will be the subject of research, and the process of calculating similarities between queries and datasets will be discussed step by step. The method used in the search process is by calculating the shortest distance between query images and dataset. The steps taken are the extraction feature and then RGB to gray color conversion. The next stage is to cut the image into four parts which will then be calculated the distance of the ecludian. The final part will calculate the performance of the algorithm using the matrix confusion method, so that the test results are in the form of error rates, precision, and accuracy. The trial process uses 30 data using 1000 datasets. In the test results obtained information in the form of recall of 1, 0.66 accuracy and 0.66precision.Keywords: Image Similarity, Histogram Image Grayscale, Ecludiance Distance.
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