作者
Ahmed Fawzi Otoom, Hatice Gunes, Massimo Piccardi
发表日期
2008/10/12
研讨会论文
2008 15th IEEE International Conference on Image Processing
页码范围
1368-1371
出版商
IEEE
简介
We address the problem of abandoned object classification in video surveillance. Our aim is to determine (i) which feature extraction technique proves more useful for accurate object classification in a video surveillance context (scale invariant image transform (SIFT) keypoints vs. geometric primitive features), and (ii) how the resulting features affect classification accuracy and false positive rates for different classification schemes used. Objects are classified into four different categories: bag (s), person (s), trolley (s), and group (s) of people. Our experimental results show that the highest recognition accuracy and the lowest false alarm rate are achieved by building a classifier based on our proposed set of statistics of geometric primitives' features. Moreover, classification performance based on this set of features proves to be more invariant across different learning algorithms.
引用总数
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AF Otoom, H Gunes, M Piccardi - 2008 15th IEEE International Conference on Image …, 2008