多活动序列的闭环跟踪与变化检测

Bi Song, Namrata Vaswani, A. Roy-Chowdhury
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引用次数: 11

摘要

我们提出了一种新的框架,用于跟踪人类活动的长序列,包括从一个活动到下一个活动的变化时间实例,使用闭环,非线性动态反馈系统。使用描述物体形状、颜色和运动的复合特征向量和描述其时空演变的非线性、分段平稳、随机动态模型进行跟踪。跟踪误差或期望对数似然作为反馈信号,用于自动检测长视频序列中一个接一个发生的活动的变化和切换。每当检测到变化时,通过将输入图像与已学习的活动模型进行比较,自动重新初始化跟踪器。与其他一些可以跟踪活动序列的方法不同,我们不需要知道活动之间的转移概率,这在许多应用程序场景中很难估计。我们在多个室内和室外真实视频上验证了该方法的有效性,并分析了其性能。
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Closed-Loop Tracking and Change Detection in Multi-Activity Sequences
We present a novel framework for tracking of a long sequence of human activities, including the time instances of change from one activity to the next, using a closed-loop, non-linear dynamical feedback system. A composite feature vector describing the shape, color and motion of the objects, and a non-linear, piecewise stationary, stochastic dynamical model describing its spatio-temporal evolution, are used for tracking. The tracking error or expected log likelihood, which serves as a feedback signal, is used to automatically detect changes and switch between activities happening one after another in a long video sequence. Whenever a change is detected, the tracker is re initialized automatically by comparing the input image with learned models of the activities. Unlike some other approaches that can track a sequence of activities, we do not need to know the transition probabilities between the activities, which can be difficult to estimate in many application scenarios. We demonstrate the effectiveness of the method on multiple indoor and outdoor real-life videos and analyze its performance.
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