基于Haar级联和感知相似度索引的高效图像索引与检索方法

Suma Dawn, Siddhant Tulsyan, Sangeeta Bhattarai, S. Gopal, V. Saxena
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引用次数: 0

摘要

图像检索是索引等许多领域的关键任务,基于内容的图像检索是一种久经考验的图像检索方法。随着图形和可视化技术的进步,图像检索应该是简单、快速和灵活的。这项工作的目的是开发一个有效的图像索引和检索系统,以基于图像本身形式的条件查询来整理类似的图像或图像。利用小波变换和相关机制实现了索引方法。它的细节可以很容易地从广泛的范围到狭窄的范围描述。索引算法采用基于Haar小波的感知相似度指数(HaarPSI)进行图像质量评估。HaarPSI利用从Haar小波分解获得的系数来评估两幅图像之间的局部相似性,以及图像区域的相对重要性。结果表明,该算法能够以较高的检索精度和中等的相关度检索和显示图像。所提出的方法已经对已知的图像检索技术进行了测试,发现可比较,在某些情况下比大多数先前已知的技术更好。测试是在不同类型的图像上进行的,来自多个数据集和大小。在大多数情况下,准确率达到99%。总而言之,本研究引入了一种简单方便的桌面计算机离线图像搜索方式,并为未来基于内容的图像检索系统的建立提供了一个踏脚石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Approach to Image Indexing and Retrieval Using Haar Cascade and Perceptual Similarity Index
Image retrieval is a critical task in many fields such as indexing and Content-Based Image Retrieval is a tried and tested method for image retrieval. With advances in graphics and visualization techniques, image retrieval should be easy, quick and flexible. The aim of this work is to develop an efficient image indexing and retrieval system to collate similar images or images based on conditioned queries in the form of an image itself. The indexing method has been performed using wavelet transform and related mechanisms. Its detailing can easily entail description from a broad range to a narrow range. The indexing algorithm applies a Haar Wavelet-Based Perceptual Similarity Index (HaarPSI) for Image Quality Assessment. The HaarPSI utilizes the coefficients obtained from a Haar wavelet decomposition to assess local similarities between two images, as well as the relative importance of image areas. Results show that the algorithm used is able to retrieve and display images with high retrieval accuracy and medium relevance.The proposed methodology has been tested against known image retrieval techniques and was found to be comparable and in some cases better than most prior known techniques. The testing was performed on images of varied types, from multiple datasets and sizes. The accuracy was found to be 99% in most cases. All in all, this study introduces a simple and convenient way of offline image searches on desktop computers and provides a stepping stone to future content-based image retrieval systems built for similar purposes.
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