Abstract

Video summarization is a process to extract objects and their activities from a video and represent them in a condensed form. Existing methods for video summarization fail to detect moving (dynamic) objects in the low color contrast area of a video frame due to the pixel intensities of objects and non-objects are almost similar. However, edges of objects are prominent in the low contrast regions. Moreover, to represent objects, geometric primitives (such as lines, arcs) are distinguishable and high level shape descriptors than edges. In this paper, a novel method is proposed for video summarization using geometric primitives such as conic parts, line segments and angles. Using these features, objects are extracted from each video frame. A cost function is applied to measure the dissimilarity of locations of geometric primitives to detect the movement of objects between consecutive frames. The total distance of object movement is calculated and each video frame is assigned a probability score. Finally, a set of key frames is selected based on the probability scores as per user provided skimming ratio or system default skimming ratio. The proposed approach is evaluated using three benchmark datasets—BL-7F, Office, and Lobby. The experimental results show that our approach outperforms the state-of-the-art method in terms of accuracy.

Highlights

  • Due to the advancement of technology, video surveillance has been used widely in emerging places to help ensure a safe and secure life style

  • The proposed method is evaluated by the publicly available BL-7F dataset [1], Office [48] and Office Lobby dataset [48]. They are considered to be the benchmark datasets to evaluate the performance of the video summarization techniques

  • Edges are prominent in low contrast regions

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Summary

Introduction

Due to the advancement of technology, video surveillance has been used widely in emerging places to help ensure a safe and secure life style. A novel approach is introduced for extracting dynamic objects applying geometric primitives such as line segments, angles and conic parts, and for generating a summary of a long video. The straight contours, corners, and curved contours of an object are presented by line segments, angles, and conic (circle, ellipse, parabola, and hyperbola) parts respectively For this purpose, an edge image is generated from a video frame by applying the Canny edge detection method. A new method for dissimilarity measure of geometric primitives is proposed for recognizing the activity of objects; 4 Geometric primitives, such as line segments, angles and conic parts are applied for extracting objects in a video with low contrast or illumination changes.

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