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Deep Learning of Local RGB-D Patches for 3D Object Detection and 6D Pose Estimation

机译:深度学习用于3D对象检测和6D姿势估计的本地RGB-D补丁

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摘要

We present a 3D object detection method that uses regressed descriptors of locally-sampled RGB-D patches for 6D vote casting. For regression, we employ a convolutional auto-encoder that has been trained on a large collection of random local patches. During testing, scene patch descriptors are matched against a database of synthetic model view patches and cast 6D object votes which are subsequently filtered to refined hypotheses. We evaluate on three datasets to show that our method generalizes well to previously unseen input data, delivers robust detection results that compete with and surpass the state-of-the-art while being scalable in the number of objects.
机译:我们提出了一种3D对象检测方法,该方法将本地采样的RGB-D色块的回归描述符用于6D投票。为了进行回归,我们使用了卷积自动编码器,该编码器已经在大量随机局部补丁集合上进行了训练。在测试期间,将场景补丁描述符与合成模型视图补丁的数据库进行匹配,并投放6D对象票,随后将其过滤为精确的假设。我们对三个数据集进行了评估,以表明我们的方法可以很好地推广到以前看不见的输入数据,提供强大的检测结果,可以与现有技术竞争并超越现有技术,同时可以扩展对象数量。

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