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Real-Time Tracking of Multiple Objects by Linear Motion and Repulsive Motion

机译:通过线性运动和排斥运动实时跟踪多个物体

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Successful multi-object tracking requires consistently maintaining object identities and real-time performance. This task becomes more challenging when objects are indistinguishable from one another. This paper presents a Bayesian framework for maintaining the identities of multiple objects. Our semi-independent joint motion model (SIMM) solves the coalescence and identity switching problem in real time. This joint motion model is a non-parametric mixture model that simultaneously captures linear motion and repulsive motion. Linear motion is a constant velocity model, while repulsive motion is described by a repulsive potential in MRF. By maintaining multimodality from multiple motion models, we can infer the appropriate motion model using image evidence and consequently avoid many identity switching errors. Moreover, we develop a new sampling method that does not suffer from the curse of dimensionality because of the availability of high-quality samples. Experimental results show that our approach can track numerous objects in real time and maintain identities under difficult situations.
机译:成功的多对象跟踪需要一致地维护对象标识和实时性能。当对象彼此无法区分时,此任务变得更具挑战性。本文介绍了维护多个对象的身份的贝叶斯框架。我们的半独立联合运动模型(SIMM)实时解决了聚结和标识的切换问题。该关节运动模型是非参数化混合模型,其同时捕获线性运动和排斥运动。线性运动是一种恒定速度模型,而在MRF中的排斥潜力描述了排斥运动。通过从多个运动模型维持多层状态,我们可以使用图像证据推断适当的运动模型,从而避免了许多身份切换错误。此外,由于高质量样本的可用性,我们开发了一种新的抽样方法,这些方法不会遭受维度诅咒。实验结果表明,我们的方法可以实时跟踪许多物体,并在困难的情况下保持身份。

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