基于协方差描述符的场景分类算法

Q4 Physics and Astronomy
付毅 Fu Yi, 吴泽民 Wu Zemin, 田畅 Tian Chang, 曾明勇 Zeng Mingyong, 揭斐然 Jie Feiran
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引用次数: 0

摘要

场景分类是计算机视觉领域的研究热点。在图像分割的前提下,提出了一种新的场景分类算法,该算法结合像素位置、颜色特征、方向特征和局部纹理特征组成协方差描述子。为了避免在黎曼空间中计算繁琐的距离度量,将协方差描述符转换为sigma点表示,在欧几里德空间中完成场景描述和基于SVM的训练。利用SUN数据库,将新算法的性能与一些经典算法进行了比较。进一步用附加噪声的数据样本验证了算法的鲁棒性。结果表明,该算法不仅在计算时间和分类性能上具有优势,而且对场景噪声具有良好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A algorithm for scene classification based on covariance descriptor
Scene classification is a hot topic in computer vision.Under the premise of image segmentation,a novel scene classification algorithm is proposed,which combines pixel location,color characteristics,direction features and local texture features to form the covariance descriptor.To avoid computing tedious distance measure in Riemannian space,the covariance descriptor is converted into sigma-point representation,where scene describing and SVM based training can be completed in Euclidian space.The performance of the novel algorithm is compared with some of classical algorithms using SUN Database.Farther more,the robustness of the algorithm is validated with noise appended data samples.The results show that the proposed algorithm not only has advantages on computation time and classification performance,but also has good robustness to scene noise.
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来源期刊
光学技术
光学技术 Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
0.60
自引率
0.00%
发文量
6699
期刊介绍: The predecessor of Optical Technology was Optical Technology, which was founded in 1975. At that time, the Fifth Ministry of Machine Building entrusted the School of Optoelectronics of Beijing Institute of Technology to publish the journal, and it was officially approved by the State Administration of Press, Publication, Radio, Film and Television for external distribution. From 1975 to 1979, the magazine was named Optical Technology, a quarterly with 4 issues per year; from 1980 to the present, the magazine is named Optical Technology, a bimonthly with 6 issues per year, published on the 20th of odd months. The publication policy is: to serve the national economic construction, implement the development of the national economy, serve production and scientific research, and implement the publication policy of "letting a hundred flowers bloom and a hundred schools of thought contend".
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