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Slot Cars: 3D Modelling for Improved Visual Traffic Analytics

机译:槽车:用于改善视觉流量分析的3D建模

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A major challenge in visual highway traffic analytics is to disaggregate individual vehicles from clusters formed in dense traffic conditions. Here we introduce a data driven 3D generative reasoning method to tackle this segmentation problem. The method is comprised of offline (learning) and online (inference) stages. In the offline stage, we fit a mixture model for the prior distribution of vehicle dimensions to labelled data. Given camera intrinsic parameters and height, we use a parallelism method to estimate highway lane structure and camera tilt to project 3D models to the image. In the online stage, foreground vehicle cluster segments are extracted using motion and background subtraction. For each segment, we use a data-driven MCMC method to estimate the vehicles configuration and dimensions that provide the most likely account of the observed foreground pixels. We evaluate the method on two highway datasets and demonstrate a substantial improvement on the state of the art.
机译:视觉高速公路交通分析中的主要挑战是将单个车辆与在交通拥挤情况下形成的集群进行分类。在这里,我们介绍了一种数据驱动的3D生成推理方法来解决此细分问题。该方法包括离线(学习)和在线(推理)阶段。在离线阶段,我们拟合混合模型,以便将车辆尺寸预先分配到标记的数据中。给定相机的固有参数和高度,我们使用并行方法估算高速公路车道的结构和相机倾斜度,以将3D模型投影到图像上。在在线阶段,使用运动和背景减法提取前景车辆群集段。对于每个细分,我们使用数据驱动的MCMC方法来估计车辆配置和尺寸,这些配置和尺寸提供了最有可能观察到的前景像素的信息。我们在两个高速公路数据集上评估了该方法,并证明了现有技术的实质性改进。

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