A detailed analysis of a new 3D spatial feature vector for indoor scene classification

نویسندگان

  • Agnes Swadzba
  • Sven Wachsmuth
چکیده

Enhancing perception of the local environment with semantic information like the room type is an important ability for agents acting in their environment. Such high-level knowledge can reduce the effort needed for, e.g., object detection. This paper shows how to extract the room label from a small amount of room percepts taken from a certain view point (like the door frame when entering the room). Such functionality is similar to the human ability to get a scene impression from a quick glance. We propose a new 3D spatial feature vector that captures the layout of a scene from extracted planar surfaces. The trained models emulate the human brain sensitivity to the 3D geometry of a room. Further, we show that our descriptor complements the information encoded by the Gist feature vector – a first attempt to model the mentioned brain area. The global scene properties are extracted from edge information in 2D depictions of the scene. Both features can be fused resulting in a system that follows our goal to combine psychological insights on human scene perception with physical properties of environments. This paper provides detailed insights into the nature of our spatial descriptor.

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عنوان ژورنال:
  • Robotics and Autonomous Systems

دوره 62  شماره 

صفحات  -

تاریخ انتشار 2014