Probabilistic shape vision for embedded systems

S. Olufs, M. Vincze, P. Plöger
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Abstract

This paper presents a robust object tracking method using a sparse shape-based object model for embedded systems with limited computational capabilities. Our approach consists of three ingredients namely shapes, a motion model and a sparse (non-binary) sub-sampling of colours in background and foreground parts based on the shape assumption. The tracking itself is inspired by the idea of having a short-term and a longterm memory. A lost object is “missed” by the long-term memory when it is no longer recognized by the short-term memory. Moreover, the long-term memory allows to re-detect vanished objects and using their new position as a new initial position for object tracking. The short-term memory is implemented with a new Monte Carlo variant which provides a heuristic to cope with the loss-of-diversity problem. It enables simultaneous tracking of multiple (visually) identical objects. The long-term memory is implemented with a Bayesian Multiple Hypothesis filter. We demonstrate the robustness of our approach with respect to object occlusions and non-Gaussian/non-linear movements of the tracked object. Our approach is very scalable since one can tune the parameters for a trade-off between precision and computational time.
嵌入式系统的概率形状视觉
针对计算能力有限的嵌入式系统,提出了一种基于稀疏形状的目标模型的鲁棒目标跟踪方法。我们的方法由三个组成部分组成,即形状,运动模型和基于形状假设的背景和前景部分的稀疏(非二进制)颜色子采样。跟踪本身的灵感来自于拥有短期和长期记忆的想法。当短期记忆不再识别一件失物时,长期记忆就会“错过”它。此外,长期记忆允许重新检测消失的物体,并将其新位置作为物体跟踪的新初始位置。短期记忆是用一种新的蒙特卡罗变体来实现的,该变体提供了一种启发式方法来处理多样性丢失问题。它可以同时跟踪多个(视觉上)相同的对象。采用贝叶斯多元假设滤波实现长时记忆。我们证明了我们的方法在对象遮挡和跟踪对象的非高斯/非线性运动方面的鲁棒性。我们的方法具有很强的可扩展性,因为可以调整参数以在精度和计算时间之间进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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