论文标题
自动驾驶汽车的基于计算机视觉的动物碰撞避免框架
Computer Vision based Animal Collision Avoidance Framework for Autonomous Vehicles
论文作者
论文摘要
动物在印度的道路上很常见,每年都会发生几次事故。这使得为无人驾驶汽车开发支持系统至关重要,以帮助防止这些形式的事故。在本文中,我们提出了一个新的框架,用于通过使用Dashcam视频上的深度学习和计算机视觉技术在高速公路上开发一种有效的方法来避免车辆到动物碰撞。我们的方法利用蒙版R-CNN模型来检测和识别各种常见的动物。然后,我们执行车道检测,以推断出检测到的动物是否在车辆的车道上,并使用基于质心的对象跟踪算法跟踪其位置和运动方向。这种方法可确保该框架有效地确定动物是否在预测其移动并相应地提供反馈之外,是否阻碍了自动驾驶汽车的路径。该系统在各种照明和天气条件下进行了测试,并被观察到相对良好的表现,这为突出的无人驾驶汽车支撑系统带来了避免实时与动物在印度道路上的动物碰撞的道路。
Animals have been a common sighting on roads in India which leads to several accidents between them and vehicles every year. This makes it vital to develop a support system for driverless vehicles that assists in preventing these forms of accidents. In this paper, we propose a neoteric framework for avoiding vehicle-to-animal collisions by developing an efficient approach for the detection of animals on highways using deep learning and computer vision techniques on dashcam video. Our approach leverages the Mask R-CNN model for detecting and identifying various commonly found animals. Then, we perform lane detection to deduce whether a detected animal is on the vehicle's lane or not and track its location and direction of movement using a centroid based object tracking algorithm. This approach ensures that the framework is effective at determining whether an animal is obstructing the path or not of an autonomous vehicle in addition to predicting its movement and giving feedback accordingly. This system was tested under various lighting and weather conditions and was observed to perform relatively well, which leads the way for prominent driverless vehicle's support systems for avoiding vehicular collisions with animals on Indian roads in real-time.