Bunyak Filiz, Palaniappan Kannappan, Nath Sumit Kumar, Seetharaman Gunasekaran
Department of Computer Science, University of Missouri-Columbia, MO 65211-2060, USA, Email: {bunyak,palaniappank}@missouri.edu ,
J Multimed. 2007 Aug;2(4):20-33. doi: 10.4304/jmm.2.4.20-33.
This paper makes new contributions in motion detection, object segmentation and trajectory estimation to create a successful object tracking system. A new efficient motion detection algorithm referred to as the flux tensor is used to detect moving objects in infrared video without requiring background modeling or contour extraction. The flux tensor-based motion detector when applied to infrared video is more accurate than thresholding "hot-spots", and is insensitive to shadows as well as illumination changes in the visible channel. In real world monitoring tasks fusing scene information from multiple sensors and sources is a useful core mechanism to deal with complex scenes, lighting conditions and environmental variables. The object segmentation algorithm uses level set-based geodesic active contour evolution that incorporates the fusion of visible color and infrared edge informations in a novel manner. Touching or overlapping objects are further refined during the segmentation process using an appropriate shape-based model. Multiple object tracking using correspondence graphs is extended to handle groups of objects and occlusion events by Kalman filter-based cluster trajectory analysis and watershed segmentation. The proposed object tracking algorithm was successfully tested on several difficult outdoor multispectral videos from stationary sensors and is not confounded by shadows or illumination variations.
本文在运动检测、目标分割和轨迹估计方面做出了新的贡献,以创建一个成功的目标跟踪系统。一种称为通量张量的新型高效运动检测算法被用于检测红外视频中的运动物体,无需背景建模或轮廓提取。基于通量张量的运动检测器应用于红外视频时,比阈值化“热点”更准确,并且对阴影以及可见光通道中的光照变化不敏感。在现实世界的监测任务中,融合来自多个传感器和源的场景信息是处理复杂场景、光照条件和环境变量的一种有用的核心机制。目标分割算法使用基于水平集的测地线活动轮廓演化,以一种新颖的方式融合了可见颜色和红外边缘信息。在分割过程中,使用适当的基于形状的模型进一步细化接触或重叠的物体。使用对应图的多目标跟踪通过基于卡尔曼滤波器的聚类轨迹分析和分水岭分割进行扩展,以处理物体组和遮挡事件。所提出的目标跟踪算法在来自固定传感器的几个具有挑战性的室外多光谱视频上成功进行了测试,并且不受阴影或光照变化的干扰。