Top Down Approach to Multiple Plane Detection
This work addresses the problem of accurate plane detection for robotics navigation, but it is incremental as it builds on existing methods by adding new cues.
The paper tackled the problem of detecting multiple planes in images, which is challenging but has many applications, by developing additional cues like local consistency of planes and normals to improve classification and merging, achieving over 85% accuracy on average in robotics navigation scenarios.
Detecting multiple planes in images is a challenging problem, but one with many applications. Recent work such as J-Linkage and Ordered Residual Kernels have focussed on developing a domain independent approach to detect multiple structures. These multiple structure detection methods are then used for estimating multiple homographies given feature matches between two images. Features participating in the multiple homographies detected, provide us the multiple scene planes. We show that these methods provide locally optimal results and fail to merge detected planar patches to the true scene planes. These methods use only residues obtained on applying homography of one plane to another as cue for merging. In this paper, we develop additional cues such as local consistency of planes, local normals, texture etc. to perform better classification and merging . We formulate the classification as an MRF problem and use TRWS message passing algorithm to solve non metric energy terms and complex sparse graph structure. We show results on challenging dataset common in robotics navigation scenarios where our method shows accuracy of more than 85 percent on average while being close or same as the actual number of scene planes.