Title :
Accelerated Hypothesis Generation for Multistructure Data via Preference Analysis
Author :
Chin, Tat-Jun ; Yu, Jin ; Suter, David
Author_Institution :
Australian Center for Visual Technol. (ACVT), Univ. of Adelaide, Adelaide, SA, Australia
fDate :
4/1/2012 12:00:00 AM
Abstract :
Random hypothesis generation is integral to many robust geometric model fitting techniques. Unfortunately, it is also computationally expensive, especially for higher order geometric models and heavily contaminated data. We propose a fundamentally new approach to accelerate hypothesis sampling by guiding it with information derived from residual sorting. We show that residual sorting innately encodes the probability of two points having arisen from the same model, and is obtained without recourse to domain knowledge (e.g., keypoint matching scores) typically used in previous sampling enhancement methods. More crucially, our approach encourages sampling within coherent structures and thus can very rapidly generate all-inlier minimal subsets that maximize the robust criterion. Sampling within coherent structures also affords a natural ability to handle multistructure data, a condition that is usually detrimental to other methods. The result is a sampling scheme that offers substantial speed-ups on common computer vision tasks such as homography and fundamental matrix estimation. We show on many computer vision data, especially those with multiple structures, that ours is the only method capable of retrieving satisfactory results within realistic time budgets.
Keywords :
computational geometry; computer vision; random processes; sampling methods; accelerated hypothesis generation; computer vision data; geometric model fitting technique; multistructure data; preference analysis; random hypothesis generation; residual sorting; sampling scheme; Computational modeling; Computer vision; Data models; Estimation; Geometry; Robustness; Sorting; Geometric model fitting; hypothesis generation; multiple structures.; residual sorting; robust estimation; Algorithms; Regression Analysis; Research Design; Signal Processing, Computer-Assisted; Statistics as Topic; Vision, Ocular;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2011.169