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Mono-Camera 3D Multi-Object Tracking Using Deep Learning Detections and PMBM Filtering

机译:使用深度学习检测和PMBM过滤的单摄像机3D多对象跟踪

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Monocular cameras are one of the most commonly used sensors in the automotive industry for autonomous vehicles. One major drawback using a monocular camera is that it only makes observations in the two dimensional image plane and can not directly measure the distance to objects. In this paper, we aim at filling this gap by developing a multi-object tracking algorithm that takes an image as input and produces trajectories of detected objects in a world coordinate system. We solve this by using a deep neural network trained to detect and estimate the distance to objects from a single input image. The detections from a sequence of images are fed in to a state-of-the art Poisson multi-Bernoulli mixture tracking filter. The combination of the learned detector and the PMBM filter results in an algorithm that achieves 3D tracking using only mono-camera images as input. The performance of the algorithm is evaluated both in 3D world coordinates, and 2D image coordinates, using the publicly available KITTI object tracking dataset. The algorithm shows the ability to accurately track objects, correctly handle data associations, even when there is a big overlap of the objects in the image, and is one of the top performing algorithms on the KITTI object tracking benchmark. Furthermore, the algorithm is efficient, running on average close to 20 frames per second.
机译:单眼相机是自动驾驶汽车行业中最常用的传感器之一。使用单眼相机的一个主要缺点是它只能在二维图像平面上进行观察,而不能直接测量到物体的距离。在本文中,我们旨在通过开发一种多对象跟踪算法来填补这一空白,该算法将图像作为输入并在世界坐标系中生成被检测对象的轨迹。我们通过使用经过训练可检测和估计单个输入图像到对象的距离的深度神经网络来解决此问题。来自图像序列的检测被输入到最新的Poisson multi-Bernoulli混合跟踪过滤器中。学习的检测器和PMBM滤波器的组合产生了一种算法,该算法仅使用单摄像机图像作为输入即可实现3D跟踪。使用可公开获得的KITTI对象跟踪数据集,可以在3D世界坐标和2D图像坐标中评估算法的性能。即使图像中的对象重叠很大,该算法仍具有准确跟踪对象,正确处理数据关联的能力,并且是KITTI对象跟踪基准测试中性能最高的算法之一。此外,该算法高效,平均每秒运行近20帧。

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