Recognition of Enhanced Images

Khanh Vu, K. Hua, N. Hiransakolwong, Sirikunya Nilpanich
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引用次数: 2

Abstract

Image enhancement such as adjusting brightness and contrast is central to improving human visualization of images’ content. Images in desired enhanced quality facilitate analysis, interpretation, classification, information exchange, indexing and retrieval. The adjustment process, guided by diverse enhancement objectives and subjective human judgment, often produces various versions of the same image. Despite the preservation of content under these operations, enhanced images are treated as new in most existing techniques via their widely different features. This leads to difficulties in recognition and retrieval of images across application domains and user interest. To allow unrestricted enhancement flexibility, accurate identification of images and their enhanced versions is therefore essential. In this paper, we introduce a measure that theoretically guarantees the identification of all enhanced images originated from one. In our approach, images are represented by points in multidimensional intensity-based space. We show that points representing images of the same content are confined in a well-defined area that can be identified by a so-devised formula. We evaluated our technique on large sets of images from various categories, including medical, satellite, texture, color images and scanned documents. The proposed measure yields an actual recognition rate approaching 100% in all image categories, outperforming other well-known techniques by a wide margin. Our analysis at the same time can serve as a basis for determining the minimum criterion a similarity measure should satisfy. We discuss also how to apply the formula as a similarity measure in existing systems to support general image retrieval.
增强图像识别
图像增强,如调整亮度和对比度,是提高人类对图像内容可视化的核心。高质量的图像有助于分析、解释、分类、信息交换、索引和检索。在不同的增强目标和人类主观判断的指导下,调整过程往往会产生同一图像的不同版本。尽管在这些操作下保留了内容,但大多数现有技术都将增强图像视为新图像,因为它们具有广泛不同的特征。这导致了跨应用领域和用户兴趣的图像识别和检索的困难。为了允许无限制的增强灵活性,准确识别图像及其增强版本是必不可少的。本文提出了一种从理论上保证所有增强图像都能被识别的方法。在我们的方法中,图像由基于多维强度的空间中的点表示。我们表明,代表相同内容的图像的点被限制在一个定义良好的区域,可以通过这样设计的公式来识别。我们在不同类别的大量图像上评估了我们的技术,包括医学、卫星、纹理、彩色图像和扫描文档。所提出的方法在所有图像类别中产生接近100%的实际识别率,远远优于其他知名技术。同时,我们的分析可以作为确定相似性度量应满足的最小标准的基础。我们还讨论了如何在现有系统中应用该公式作为相似度量来支持一般图像检索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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