Content-Based Video Retrieval Using Integration of Curvelet Transform and Simple Linear Iterative Clustering

Reddy Mounika Bommisetty, A. Khare, M. Khare, P. Palanisamy
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引用次数: 5

Abstract

Video is a rich information source containing both audio and visual information along with motion information embedded in it. Applications such as e-learning, live TV, video on demand, traffic monitoring, etc. need an efficient video retrieval strategy. Content-based video retrieval and superpixel segmentation are two diverse application areas of computer vision. In this work, we are presenting an algorithm for content-based video retrieval with help of Integration of Curvelet transform and Simple Linear Iterative Clustering (ICTSLIC) algorithm. Proposed algorithm consists of two steps: off line processing and online processing. In offline processing, keyframes of the database videos are extracted by employing features: Pearson Correlation Coefficient (PCC) and color moments (CM) and on the extracted keyframes superpixel generation algorithm ICTSLIC is applied. The superpixels generated by applying ICTSLIC on keyframes are used to represent database videos. On other side, in online processing, ICTSLIC superpixel segmentation is applied on query frame and the superpixels generated by segmentation are used to represent query frame. Then videos similar to query frame are retrieved through matching done by calculation of Euclidean distance between superpixels of query frame and database keyframes. Results of the proposed method are irrespective of query frame features such as camera motion, object’s pose, orientation and motion due to the incorporation of ICTSLIC superpixels as base feature for matching and retrieval purpose. The proposed method is tested on the dataset comprising of different categories of video clips such as animations, serials, personal interviews, news, movies and songs which is publicly available. For evaluation, the proposed method randomly picks frames from database videos, instead of selecting keyframes as query frames. Experiments were conducted on the developed dataset and the performance is assessed with different parameters Precision, Recall, Jaccard Index, Accuracy and Specificity. The experimental results shown that the proposed method is performing better than the other state-of-art methods.
基于曲线变换和简单线性迭代聚类的基于内容的视频检索
视频是一种丰富的信息源,它包含了音频和视觉信息以及嵌入其中的运动信息。电子学习、电视直播、视频点播、交通监控等应用需要高效的视频检索策略。基于内容的视频检索和超像素分割是计算机视觉的两个不同的应用领域。在这项工作中,我们提出了一种基于曲波变换和简单线性迭代聚类(ICTSLIC)算法集成的基于内容的视频检索算法。该算法包括离线处理和在线处理两个步骤。在离线处理中,利用Pearson相关系数(PCC)和颜色矩(CM)特征提取数据库视频的关键帧,并在提取的关键帧上应用超像素生成算法ictlic。在关键帧上应用ictlic生成的超像素用于表示数据库视频。另一方面,在在线处理中,对查询帧进行ictlic超像素分割,用分割产生的超像素表示查询帧。然后通过计算查询帧的超像素与数据库关键帧之间的欧氏距离进行匹配,检索出与查询帧相似的视频。该方法采用ictlic超像素作为基本特征进行匹配和检索,不受相机运动、物体姿态、方向和运动等查询帧特征的影响。在由动画、连续剧、个人访谈、新闻、电影和歌曲等不同类别的公开视频剪辑组成的数据集上对所提出的方法进行了测试。为了评估,该方法从数据库视频中随机选取帧,而不是选择关键帧作为查询帧。在开发的数据集上进行了实验,并通过不同的参数Precision、Recall、Jaccard Index、Accuracy和Specificity来评估其性能。实验结果表明,该方法的性能优于现有的方法。
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