基于粒子群优化的视频内容检索

A. Salahuddin, Al Naqvi, Kainat Murtaza, J. Akhtar
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引用次数: 12

摘要

传统的视频搜索引擎基于用户文本查询与视频相关标签的对应关系来检索结果。只有与标记匹配的内容才会作为结果返回给用户。鉴于互联网上的视频数量不断增加,尤其是那些没有标签或无关标签的视频,这种传统的方法最终导致了重要上下文缺失率的上升。在视频库中基于内容的搜索绝对是一种替代解决方案,但它需要耗时的计算和比较,这使得详尽的搜索不可行。本文的目的是提供一种有效的方法,该方法将导致针对用户查询图像的视频搜索结果的增量改进。该方法采用基于进化种群的搜索算法粒子群优化(PSO)在视频库中寻找帧。每个群粒子的适应度是相对于用户提供的输入图像和通过PSO获取的视频帧中存在的内容的相似度。这使我们免于对库中每个视频的每一帧进行详尽和线性搜索。每一代粒子群中的相对最佳匹配显示给用户,以满足用户的参与度。为了计算每个群体粒子的适应度,我们测试了三种相似性度量,1)基于相关性的模板匹配,2)尺度不变特征变换(SIFT)算法得分,3)卷积。对真实视频库的初步研究结果令人鼓舞。
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 Retrieval Using Particle Swarm Optimization
Traditional video search engines retrieve the results on the basis of correspondence between user's textual query and tags associated with the videos. Only that content that matches the tags is returned as a result to the user. Given the ever-increasing immensity of videos on the internet, especially those with zero or irrelevant tags, such traditional methodology has eventually led to rise in ratio of missing important context. Content based searching within a video library is definitely an alternative solution but it requires time consuming computations and comparisons which renders exhaustive search unpractical. The purpose of this paper is to provide an efficient methodology that will lead to incremental improvement in the video search results against a user's query image. Our method employs Particle Swarm Optimization (PSO), an evolutionary population based search algorithm, to look for frames within the video library. The fitness of each swarm particle is the degree of similarity with respect to the content present in both the input image provided by the user and the video frame(s) fetched through PSO. This exempts us from the exhaustive and linear search of every frame of every video in the library. The relative best match in each generation of PSO is shown to the user for his engagement. For calculating the fitness of each swarm particle we have tested three similarity measures, 1) correlation based template matching, 2) score from scale-invariant feature transform (SIFT) algorithm and, 3) convolution. Preliminary results on real video library are promising.
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