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3D Bounding Box Proposal for on-Street Parking Space Status Sensing in Real World Conditions

机译:3D横向箱式停车空间现状中的建议在现实世界的条件下感应

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Vision-based technologies have been extensively applied for on-street parking space sensing,aiming at providing timely and accurate information for drivers and improving daily travel convenience.However,it faces great challenges as a partial visualization regularly occurs owing to occlusion from static or dynamic objects or a limited perspective of camera.This paper presents an imagery-based framework to infer parking space status by generating 3D bounding box of the vehicle.A specially designed convolutional neural network based on ResNet and feature pyramid network is proposed to overcome challenges from partial visualization and occlusion.It predicts 3D box candidates on multi-scale feature maps with five different 3D anchors,which generated by clustering diverse scales of ground truth box according to different vehicle templates in the source data set.Subsequently,vehicle distribution map is constructed jointly from the coordinates of vehicle box and artificially segmented parking spaces,where the normative degree of parked vehicle is calculated by computing the intersection over union between vehicle’s box and parking space edge.In space status inference,to further eliminate mutual vehicle interference,three adjacent spaces are combined into one unit and then a multinomial logistic regression model is trained to refine the status of the unit.Experiments on KITTI benchmark and Shanghai road show that the proposed method outperforms most monocular approaches in 3D box regression and achieves satisfactory accuracy in space status inference.
机译:基于视觉的技术已被广泛应用于街边停车位感知,旨在为司机提供及时准确的信息,并提高日常旅行便利。然而,由于静电或动态闭塞,因此由于闭塞而导致局部可视化面临巨大挑战对象或摄像机的有限透视。本文通过生成车辆的3D边界框来推断出基于图像的框架来推断停车位状态。提出了基于Reset的专门设计的卷积神经网络,并采用金字塔网络来克服部分挑战可视化和occlusion.it预测使用五个不同的3D锚点的多尺度特征映射上的3D框候选,这是根据源数据集中的不同车辆模板聚类的不同地面真相盒的聚类等级尺度生成.Sumsew,车辆分布图是联合构建的从车箱的坐标和人工分割的停车位停放车辆的规范程度是通过计算车辆箱子和停车空间边缘之间的工会交叉来计算的空间。在空间状态推断中,为了进一步消除相互车辆干扰,将三个相邻的空间组合成一个单元,然后是多项式物流回归模型接受培训以优化单位的状态。基蒂基准和上海路上的实验情况表明,所提出的方法优于3D箱回归中的大多数单曲方法,并在空间状态推理中实现了令人满意的精度。

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