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基于层次事件检测的足球视频索引语义概念挖掘

Semantic Concept Mining Based on Hierarchical Event Detection for Soccer Video Indexing.

作者信息

Kolekar Maheshkumar H, Palaniappan Kannappan, Sengupta Somnath, Seetharaman Gunasekaran

机构信息

Dept. of Computer Science, University of Missouri-Columbia, MO 65211-2060, USA.

Dept. of Electronics and ECE, Indian Institute of Technology, Kharagpur-721302, INDIA.

出版信息

J Multimed. 2009 Oct;4(5):298-312. doi: 10.4304/jmm.4.5.298-312.

DOI:10.4304/jmm.4.5.298-312
PMID:35646164
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9139424/
Abstract

In this paper, we present a novel automated indexing and semantic labeling for broadcast soccer video sequences. The proposed method automatically extracts silent events from the video and classifies each event sequence into a concept by sequential association mining. The paper makes three new contributions in multimodal sports video indexing and summarization. First, we propose a novel hierarchical framework for soccer (football) video event sequence detection and classification. Unlike most existing video classification approaches, which focus on shot detection followed by shot-clustering for classification, the proposed scheme perform a top-down video scene classification which avoids shot clustering. This improves the classification accuracy and also maintains the temporal order of shots. Second, we compute the association for the events of each excitement clip using mining algorithm. We pro- pose a novel sequential association distance to classify the association of the excitement clip into semantic concepts. For soccer video, we have considered as semantic concepts. Third, the extracted excitement clips with semantic concept label helps us to summarize many hours of video to collection of soccer highlights such as goals, saves, corner kicks, etc. We show promising results, with correctly indexed soccer scenes, enabling structural and temporal analysis, such as video retrieval, highlight extraction, and video skimming.

摘要

在本文中,我们提出了一种用于足球比赛视频序列的新型自动索引和语义标注方法。该方法能自动从视频中提取无声事件,并通过序列关联挖掘将每个事件序列分类到一个概念中。本文在多模态体育视频索引和摘要方面做出了三项新贡献。首先,我们提出了一种用于足球视频事件序列检测和分类的新型分层框架。与大多数现有视频分类方法不同,现有方法侧重于镜头检测,然后通过镜头聚类进行分类,而我们提出的方案进行自上而下的视频场景分类,避免了镜头聚类。这提高了分类准确率,同时保持了镜头的时间顺序。其次,我们使用挖掘算法计算每个精彩片段中事件的关联度。我们提出了一种新颖的序列关联距离,将精彩片段的关联度分类到语义概念中。对于足球视频,我们将进球、扑救、角球等视为语义概念。第三,提取的带有语义概念标签的精彩片段有助于我们将长达数小时的视频总结为足球精彩瞬间的集合,如进球、扑救、角球等。我们展示了有前景的结果,足球场景索引正确,能够进行结构和时间分析,如视频检索、精彩瞬间提取和视频浏览。