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Dempster-Shafer Fusion of Context Sources for Pedestrian Recognition

机译:Dempster-Shafer融合行人认可的语境来源

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This contribution presents the design of an image-based contextual pedestrian classifier for an automotive application. Our previous work shows that local classifiers working with image cutouts are in many cases not sufficient to achieve satisfactory results in complex scenarios. As a solution the work proposed incorporating contextual knowledge into the classification task, significantly improving the classification results. Contextual knowledge is described by a set of different and independent context sources. This paper discusses the fusion of these sources on the basis of the Dempster-Shafer theory. It presents and compares different possibilities to model the frame of discernment and the mass function to achieve optimal results. Furthermore, it provides an elegant way to take uncertainties of the context sources into account. The methods are evaluated on simulated and on real data.
机译:此贡献介绍了用于汽车应用程序的基于图像的上下文步行分类器的设计。我们以前的工作表明,使用图像剪影的本地分类器在许多情况下不足以实现复杂情景的令人满意的结果。作为解决方案,建议将上下文知识纳入分类任务,显着提高了分类结果。由一组不同和独立的上下文源描述了上下文知识。本文在Dempster-Shafer理论的基础上讨论了这些来源的融合。它显示并比较了模拟识别帧和质量功能的不同可能性,以实现最佳结果。此外,它提供了优雅的方式,以考虑上下文源的不确定性。这些方法在模拟和实际数据上进行评估。

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