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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Monocular pedestrian orientation estimation based on deep 2D-3D feedforward
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Monocular pedestrian orientation estimation based on deep 2D-3D feedforward

机译:基于Deep 2D-3D馈送的单手套方向估算

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摘要

Accurate pedestrian orientation estimation of autonomous driving helps the ego vehicle obtain the intentions of pedestrians in the related environment, which are the base of safety measures such as collision avoidance and prewarning. However, because of relatively small sizes and high-level deformation of pedestrians, common pedestrian orientation estimation models fail to extract sufficient and comprehensive information from them, thus having their performance restricted, especially monocular ones which fail to obtain depth information of objects and related environment. In this paper, a novel monocular pedestrian orientation estimation model, called FFNet, is proposed. Apart from camera captures, the model adds the 2D and 3D dimensions of pedestrians as two other inputs according to the logic relationship between orientation and them. The 2D and 3D dimensions of pedestrians are determined from the camera captures and further utilized through two feedforward links connected to the orientation estimator. The feedforward links strengthen the logicality and interpretability of the network structure of the proposed model. Experiments show that the proposed model has at least 1.72% AOS increase than most state-of-the-art models after identical training processes. The model also has competitive results in orientation estimation evaluation on KITTI dataset. (C) 2019 Elsevier Ltd. All rights reserved.
机译:自主驾驶的准确行人方向估计有助于自我车辆在相关环境中获得行人的意图,这是避免和预警等安全措施的基础。但是,由于行人的尺寸和高级变形相对较小,常见的行人取向估计模型未能从它们中提取足够的和全面的信息,从而具有它们的性能限制,特别是单目一体,无法获得对象和相关环境的深度信息。本文提出了一种名为FFNET的新型单象行人取向估计模型。除了相机捕获外,模型根据方向和它们之间的逻辑关系,将行人的2D和3D维度添加为另外两个输入。从相机捕获确定行人的2D和3D尺寸,并通过连接到方向估计器的两个前馈链路进一步利用。前馈链路增强了所提出的模型的网络结构的逻辑性和可解释性。实验表明,在相同的训练过程之后,所提出的模型的AOS增加到大多数最先进的模型。该模型在Kitti DataSet上的方向估计评估中也具有竞争力。 (c)2019年elestvier有限公司保留所有权利。

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