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Sliding Shapes for 3D Object Detection in Depth Images

机译:用于深度图像中3D对象检测的滑动形状

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摘要

The depth information of RGB-D sensors has greatly simplified some common challenges in computer vision and enabled breakthroughs for several tasks. In this paper, we propose to use depth maps for object detection and design a 3D detector to overcome the major difficulties for recognition, namely the variations of texture, illumination, shape, viewpoint, clutter, occlusion, self-occlusion and sensor noises. We take a collection of 3D CAD models and render each CAD model from hundreds of viewpoints to obtain synthetic depth maps. For each depth rendering, we extract features from the 3D point cloud and train an Exemplar-SVM classifier. During testing and hard-negative mining, we slide a 3D detection window in 3D space. Experiment results show that our 3D detector significantly outperforms the state-of-the-art algorithms for both RGB and RGB-D images, and achieves about × 1.7 improvement on average precision compared to DPM and R-CNN. All source code and data are available online.
机译:RGB-D传感器的深度信息极大地简化了计算机视觉中的一些常见挑战,并实现了多项任务的突破。在本文中,我们建议使用深度图进行物体检测,并设计3D检测器来克服识别的主要困难,即纹理,照明,形状,视点,杂波,遮挡,自遮挡和传感器噪声的变化。我们收集3D CAD模型的集合,并从数百个视点渲染每个CAD模型,以获得合成深度图。对于每个深度渲染,我们从3D点云中提取特征并训练Exemplar-SVM分类器。在测试和硬阴性挖掘期间,我们在3D空间中滑动3D检测窗口。实验结果表明,对于RGB和RGB-D图像,我们的3D检测器明显优于最新算法,与DPM和R-CNN相比,其平均精度提高了约1.7倍。所有源代码和数据均可在线获得。

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