3D Object Detection with Latent Support Surfaces

نویسندگان

  • Zhile Ren
  • Erik B. Sudderth
چکیده

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.

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Zhile Ren | Research Statement

Figure 1: COG descriptor encodes orientation-invariant gradient feature for objects with different views. I develop new representations and algorithms for three-dimensional (3D) scene understanding from cluttered indoor RGB-D images and outdoor video sequences. I introduce novel representations for 3D object detection systems that localize objects with cuboids and describe room layouts by Manha...

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تاریخ انتشار 2018