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Content-Based Image Retrieval Using Direct Binary Search Block Truncation Coding Features

机译:基于内容的图像检索使用直接二进制搜索块截断编码特征

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摘要

This paper presents a new image feature descriptor derived from the Direct Binary Search Block Truncation Coding (DBSBTC) data-stream without requiring the decoding process. Three image feature descriptors, namely Color Autocorrellogram Feature (CAF), Legendre Chromaticity Moment Feature (LCMF), and Local Halftoning Pattern Feature (LHPF), are simply constructed from the DBSBTC min quantizer, max quantizer, and its corresponding bitmap image, respectively. The similarity between two images can be measured using these descriptors under specific distance metric. The proposed method yields better image retrieval performance compared to the former Block Truncation Coding (BTC) and existing schemes under the natural and textural image database in the grayscale and color space. The DBSBTC performs well for image compression, at the same time, it gives an effective discriminative feature in the image retrieval task.
机译:本文介绍了从直接二进制搜索块截断编码(DBSBTC)数据流导出的新图像特征描述符,而无需解码处理。三个图像特征描述符,即彩色自动超塑图功能(CAF),Legendre Choromations Scient Feature(LCMF)和局部半色调模式(LHPF)分别由DBSBTC MIN量化器,MAX量化器及其对应的位图图像构成。可以在特定距离度量下使用这些描述符测量两个图像之间的相似性。与以前的块截断编码(BTC)和灰度和色彩空间中的自然和纹理图像数据库下的现有方案相比,所提出的方法产生更好的图像检索性能。 DBSBTC同时对图像压缩执行良好的图像压缩,它在图像检索任务中提供了有效的鉴别特征。

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