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Titlebook: Image and Signal Processing; 8th International Co Alamin Mansouri,Abderrahim El Moataz,Driss Mammass Conference proceedings 2018 Springer N

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An Adaptive Block-Based Histogram Packing for Improving the Compression Performance of JPEG-LS for IPEG-LS provides an efficient lossless compression at a reasonable complexity. However, its efficiency is severely affected when encoding images or blocks containing only a subset of the possible values from the nominal alphabet. The aim of this work is to improve the compression performance of JPEG-
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Separability Index-Based Feature Selection and a Two-Tier Classifier for Improving Diagnostic Perforgh EPS-based methods are effective for constant operating conditions, it makes difficult to detect a fault when the machine operates at variable shaft speeds. To address this issue, we propose a method that performs as follows: (a) a feature extraction technique is used to extract as many informatio
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Number of Useful Components in Gaussian Mixture Models for Patch-Based Image Denoisinginent Gaussian component is usually selected to recover a noisy image patch, which leads to computationally efficient implementations. We attempt to justify this on several image datasets by evaluating the number of Gaussian components required for recovering patches. We show that even patches witho
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Review: Automatic Image Annotation for Semantic Image Retrievalms grows as well. Automatic image annotation was adopted by several research as the emerging trend in image retrieval area. Actually, it is considered as the best solution that combines the content-based techniques by using low-level image features and text-based techniques exploiting textual annota
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