用于视频目标跟踪的高效颜色-成分粒子滤波

Jian-Hui Chen, W. Tsai, M. Sheu, K. Lin, Ho-En Liao
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引用次数: 0

摘要

提出了一种新的粒子滤波对象模型和相似度度量方法。基于聚类颜色直方图概念和相似度度量方法,利用欧几里得距离对颜色成分进行分析和相似度度量,有效地降低了内存消耗,提高了处理速度。此外,为了提高处理速度,我们在之前的目标分割的基础上选择候选粒子。这样可以减少颗粒量,加快跟踪操作。实验结果表明,与现有方法相比,该方法在复杂场景中具有更好的运动目标识别性能。所提出的方法能够以每秒58帧的速度舒适地实时运行,平均内存消耗为4428字节。
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Efficient Color-Ingredient Particle Filter for Video Object Tracking
This paper proposes a new object model and a similarity measure method for particle filter. Based on cluster color histogram concept and similarity measure method, we analyze color ingredient and measure similarity using Euclidean distance, such that our approach can decrease memory consumption and increase processing speed effectively. Furthermore, in order to increase processing speed, we select the candidate particles based on the previous object segmentation. This can reduce the particle amount and speed up tracking operation. Comparing with the existing approaches, the experiments demonstrate that our method has batter performance even when moving objects go across complex scene. The proposed method can run comfortably in real time with 58 frames per second, and 4428 bytes memory consumption in average.
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