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Improving Object Detection in 2D Images Using a 3D World Model

机译:使用3D世界模型改善2D图像中的对象检测

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A mobile robot operating in a netcentric environment can utilize offboard resources on the network to improve its local perception. One such offboard resource is a world model built and maintained by other sensor systems. In this paper we present results from research into improving the performance of Deformable Parts Model object detection algorithms by using an offboard 3D world model. Experiments were run for detecting both people and cars in 2D photographs taken in an urban environment. After generating candidate object detections, a 3D world model built from airborne Light Detection and Ranging (LIDAR) and aerial photographs was used to filter out false alarm using several types of geometric reasoning. Comparison of the baseline detection performance to the performance after false alarm filtering showed a significant decrease in false alarms for a given probability of detection.
机译:在以网络为中心的环境中运行的移动机器人可以利用网络上的外部资源来改善其本地感知能力。这样的外部资源之一就是由其他传感器系统建立和维护的世界模型。在本文中,我们介绍了通过使用外接3D世界模型改善可变形零件模型对象检测算法性能的研究结果。进行了实验,以检测在城市环境中拍摄的2D照片中的人和汽车。生成候选对象检测后,使用基于机载光检测和测距(LIDAR)和航拍照片的3D世界模型,使用几种类型的几何推理过滤掉虚假警报。将基线检测性能与错误警报过滤后的性能进行比较,发现在给定的检测概率下,错误警报的显着减少。

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