基于SPSA的视频检索特征相关性估计

S. Velusamy, S. Bhatnagar, S. Basavaraja, V. Sridhar
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引用次数: 5

摘要

随着各种来源的大量视频数据的可用性,对高效视频检索工具的需求日益增加。视频是一种多模态数据,用户提供的查询视频(针对按例查询类型的视频搜索)与检索到的视频片段之间的相关性感知是主观的。我们提出了一种有效的视频检索方法,该方法利用用户对检索视频相关性的反馈,迭代地重新制定输入查询特征向量(QFV)以改进视频检索。QFV重构采用基于同步摄动随机逼近(SPSA)技术的一种简单但功能强大的特征权优化方法。建立了一个包含视频索引、搜索和相关反馈(RF)阶段的视频检索系统,以验证该方法的性能。使用传统的视频特征(如颜色、纹理等)对查询和数据库视频进行索引。然而,我们使用综合和新颖的特征表示方法,以及时空距离度量来检索与查询相似的前M个视频。在反馈阶段,使用先前检索的视频的用户激活迭代来自动重新制定反映用户偏好的QFV权重(重要性度量)。根据我们的观察,这种反馈的几次迭代通常足以检索所需的视频剪辑。基于SPSA的射频算法在面向用户的特征权重优化中的新颖应用,使得该方法区别于现有的方法。实验结果表明,基于射频的视频检索具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SPSA based feature relevance estimation for video retrieval
With the availability of a huge amount of video data on various sources, efficient video retrieval tools are increasingly in demand. Video being a multi-modal data, the perceptions of ldquorelevancerdquo between the user provided query video (in case of Query-By-Example type of video search) and retrieved video clips are subjective in nature. We present an efficient video retrieval method that takes userpsilas feedback on the relevance of retrieved videos and iteratively reformulates the input query feature vectors (QFV) for improved video retrieval. The QFV reformulation is done by a simple, but powerful feature weight optimization method based on Simultaneous Perturbation Stochastic Approximation (SPSA) technique. A video retrieval system with video indexing, searching and relevance feedback (RF) phases is built for demonstrating the performance of the proposed method. The query and database videos are indexed using the conventional video features like color, texture, etc. However, we use the comprehensive and novel methods of feature representations, and a spatio-temporal distance measure to retrieve the top M videos that are similar to the query. In feedback phase, the user activated iterative on the previously retrieved videos is used to reformulate the QFV weights (measure of importance) that reflect the userpsilas preference, automatically. It is our observation that a few iterations of such feedback are generally sufficient for retrieving the desired video clips. The novel application of SPSA based RF for user-oriented feature weights optimization makes the proposed method to be distinct from the existing ones. The experimental results show that the proposed RF based video retrieval exhibit good performance.
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