Regions of Interest Extraction Based on Visual Saliency in Compressed Domain

L. Sui, Jing Zhang, L. Zhuo, Yuncong Yang
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引用次数: 3

Abstract

Recently bag-of-words (BoW) model having been widely used in textual information processing has been extended into many tasks in visual domain such as image classification, scene analysis, image annotation and image retrieval, namely bag-of-visual-words (BoVW) model. Therefore, it is essential to create an effective visual vocabulary. Most of existing approaches create visual vocabularies from image in pixel domain, which requires extra processing time in decompressed images, since most images are stored in compressed format. In this paper we propose to create a visual vocabulary based on Scale Invariant Feature Transform(SIFT) descriptor in compressed domain with the following three steps, (1) constructing low-resolution images in compressed domain, (2) extracting SIFT descriptor from low-resolution images, and (3) creating a visual vocabulary based on extracted SIFT descriptors. In order to evaluate the performance of the visual words, experiments have been conducted on identifying pornographic images. Experimental results indicate that the proposed method can recognize pornographic images accurately with much reduced computational time.
基于压缩域视觉显著性的兴趣区域提取
近年来,广泛应用于文本信息处理的词袋模型(BoW)已经扩展到图像分类、场景分析、图像标注和图像检索等视觉领域的许多任务中,即视觉词袋模型(BoVW)。因此,创建一个有效的视觉词汇是至关重要的。现有的大多数方法都是从像素域的图像中创建视觉词汇表,由于大多数图像都是以压缩格式存储的,因此在解压缩图像中需要额外的处理时间。本文提出了一种基于压缩域尺度不变特征变换(SIFT)描述符的视觉词汇表创建方法,该方法分为三个步骤:(1)在压缩域中构造低分辨率图像;(2)从低分辨率图像中提取SIFT描述符;(3)基于提取的SIFT描述符创建视觉词汇表。为了评估视觉文字的性能,进行了识别色情图像的实验。实验结果表明,该方法可以准确地识别色情图像,大大减少了计算时间。
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