3D Object Detection with Latent Support Surfaces

Zhile Ren, Erik B. Sudderth
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引用次数: 18

Abstract

We develop a 3D object detection algorithm that uses latent support surfaces to capture contextual relationships in indoor scenes. Existing 3D representations for RGB-D images capture the local shape and appearance of object categories, but have limited power to represent objects with different visual styles. The detection of small objects is also challenging because the search space is very large in 3D scenes. However, we observe that much of the shape variation within 3D object categories can be explained by the location of a latent support surface, and smaller objects are often supported by larger objects. Therefore, we explicitly use latent support surfaces to better represent the 3D appearance of large objects, and provide contextual cues to improve the detection of small objects. We evaluate our model with 19 object categories from the SUN RGB-D database, and demonstrate state-of-the-art performance.
具有潜在支持面的3D对象检测
我们开发了一种3D物体检测算法,该算法使用潜在的支持面来捕捉室内场景中的上下文关系。RGB-D图像的现有3D表示捕获对象类别的局部形状和外观,但在表示具有不同视觉风格的对象方面能力有限。小物体的检测也很有挑战性,因为在3D场景中搜索空间非常大。然而,我们观察到,3D物体类别中的许多形状变化可以通过潜在支撑面的位置来解释,并且较小的物体通常由较大的物体支撑。因此,我们明确地使用潜在支持面来更好地表示大物体的3D外观,并提供上下文线索来提高对小物体的检测。我们用SUN RGB-D数据库中的19个对象类别来评估我们的模型,并展示了最先进的性能。
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