基于对象匹配和局部全局描述符的墨西哥文化遗产视频内容检索系统

M. Cedillo-Hernández, F. Garcia-Ugalde, Antonio Cedillo-Hernández, M. Nakano-Miyatake, H. Perez-Meana
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引用次数: 8

摘要

多媒体数据和网络技术在过去十年中有了高度的发展,随着这些变化,用户已经从文本转向基于内容的视频检索系统,因为它的性能更好。本文提出了一种快速的基于内容的视频检索系统,该系统将由加速鲁棒特征算法获得的局部描述子与有效快速的目标匹配操作相结合。为了节省计算时间,对压缩后的视频数据进行部分解码,得到关键帧的离散余弦变换系数,利用余弦变换系数得到帧的子块系数和下采样版本。初步结果是利用基于颜色相关图和主色描述符的有效颜色描述符进行排序。为了衡量所提出的技术的性能,使用了精度和召回率指标。实验结果表明了该方法在墨西哥文化遗产视频数据库中的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content Based Video Retrival System for Mexican Culture Heritage Based on Object Matching and Local-Global Descriptors
Multimedia data and networking technologies have had a highly growing during the last decade, with these changes users have changed from text to content based video retrieval systems due to its better performance. We propose a fast content-based video retrieval system which involves the combination of a local descriptor obtained from the speeded-up robust feature algorithm together with an effective and fast object matching operation. To save computational time, compressed video data are partially decoded in order to get discrete cosine transform coefficients of key frames, which are used to obtain sub-block coefficients and a down-sampling version of frames. The preliminary results are ranking using an efficient color descriptor based on color correlogram and dominant color descriptors. To measure the performance of the proposed technique the precision and recall metrics are used. The experimental results show the accuracy of the proposed method applied to a database of Mexican Culture Heritage videos.
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