Complementary retrieval for distorted images

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摘要

In today's computer networks, the amount of digital images increases rapidly and enormously. However, images may be distorted through different types of processing such as histogram equalization, quantization, smoothing, compression, noise corruption, geometric transformation, and changing of illumination. It is imperative to develop an effective method to retrieve the original images from very large image databases because only the original images are stored for economy. In this study, a new image normalization method is first proposed to solve the problem with illumination varying. A complementary retrieval method is then proposed to resist various types of processing. According to the type of distortion, all processing are classified into three distortion categories, low frequency, high frequency and geometric transformation. In addition, different features are resistant to different distortion categories. However, the distortion by which a query image is corrupted is usually unknown. Hence, a complementary analysis is proposed to determine the distortion category for each query image and the feature resistant to the estimated category is used to retrieve the desired original image. As a result, an effective retrieval method is achieved. The feasibility and effectiveness of our method are demonstrated by experimental results.

论文关键词:Image normalization,Image retrieval,Distortion,Complementary analysis,Multiple feature integration

论文评审过程:Received 5 July 2001, Available online 12 April 2002.

论文官网地址:https://doi.org/10.1016/S0031-3203(01)00164-9