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Semantic segmentation-based parking space detection with standalone around view monitoring system

机译:基于语义分割的停车位检测和独立的环视监控系统

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摘要

An auto-parking system is one of the promising technologies to reduce accidents and enhance driver convenience in parking lots. To accomplish collision-free parking, precise and robust parking space detection is required. However, harsh conditions such as varied illumination in outdoor parking lots and high reflection in indoor parking lots degrade the reliability of parking space detection. In this paper, we propose a unified structure for parking space detection to detect parking slot markings and static obstacles. A fully convolutional network for semantic segmentation can immediately identify free spaces, slot markings, vehicles, and other objects without using a range sensor or 3D reconstruction algorithm. Furthermore, a vertical grid encoding method can simultaneously detect unoccupied slots identified by parking slot markings and empty spaces created by surrounding static objects without sensor fusion. Experimental results show the robustness of the proposed method in various different parking scenarios. Even in challenging conditions such as dark shaded or high-glare areas, the detection performance maintains a precision rate of 96.81% and recall rate of 97.80%.
机译:自动停车系统是减少事故并增加停车场驾驶员便利性的有前途的技术之一。为了实现无碰撞停车,需要精确而强大的停车位检测。然而,诸如室外停车场中的照明变化和室内停车场中的高反射之类的恶劣条件降低了停车位检测的可靠性。在本文中,我们提出了一种用于停车位检测的统一结构,以检测停车位标记和静态障碍物。用于语义分割的完全卷积网络可以立即识别自由空间,插槽标记,车辆和其他对象,而无需使用距离传感器或3D重建算法。此外,垂直网格编码方法可以同时检测由停车位标记标识的空位和周围静止物体产生的空白,而无需传感器融合。实验结果表明了该方法在各种不同停车场景下的鲁棒性。即使在阴影或高眩光区域等挑战性条件下,检测性能也可以保持96.81%的准确率和97.80%的召回率。

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