Chitkara University Institute of Engineering and Technology, Chitkara University, Chandigarh, Punjab, India.
KIET Group of Institutions, Delhi NCR, Ghaziabad, India.
J Healthc Eng. 2022 Mar 14;2022:9523009. doi: 10.1155/2022/9523009. eCollection 2022.
As multimedia technology is developing and growing these days, the use of an enormous number of images and its datasets is likewise expanding at a quick rate. Such datasets can be utilized for the purpose of image retrieval. This research focuses on extraction of similar images established on its different features for the image retrieval purpose from huge dataset of images. In this paper initially, the query image is searched within the available dataset and, then, the color difference histogram (CDH) descriptor is employed to retrieve the images from database. The basic characteristic of CDH is that it counts the color difference stuck among two distinct labels in the color space. This method is experimented on random images used for various medical purposes. Various unlike features of an image are extracted via different distance methods. The precision rate, recall rate, and -measure are all used to evaluate the system's performance. Comparative analysis in terms of -measure is also made to check for the best distance method used for retrieval of images.
随着多媒体技术的发展和普及,大量的图像及其数据集也在快速增长。这些数据集可用于图像检索。本研究旨在从大量的图像数据集中提取基于不同特征的相似图像,以实现图像检索。在本文中,首先在可用的数据集内搜索查询图像,然后使用颜色差异直方图 (CDH) 描述符从数据库中检索图像。CDH 的基本特征是它计算颜色空间中两个不同标签之间的颜色差。该方法在用于各种医学目的的随机图像上进行了实验。通过不同的距离方法提取图像的各种不同特征。精度、召回率和 F1 分数都用于评估系统的性能。还进行了 F1 分数方面的对比分析,以检查用于图像检索的最佳距离方法。