Title :
Learning Generative Models of Object Parts from a Few Positive Examples
Author :
Riabchenko, Ekaterina ; Kamarainen, Joni-Kristian ; Ke Chen
Author_Institution :
Machine Vision & Pattern Recognition Lab., Lappeenranta Univ. of Technol., Lappeenranta, Finland
Abstract :
A number of computer vision problems such as object detection, pose estimation, and face recognition utilise local parts to represent objects, which include the distinguished information of objects. In this work, we introduce a novel probabilistic framework which automatically learns class-specific object parts (landmarks) in generative-learning manner. Encouraged by the success in learning and detecting facial landmarks, we employ bio-inspired multi-resolution Gabor features in the proposed framework. Specifically, complex-valued Gabor filter responses are first transformed to landmark specific likelihoods using Gaussian Mixture Models (GMM), and then efficient response matrix shift operations provide detection over orientations and scales. We avoid the undesirable characteristic of generative learning, a large number of training instances, with the novel concept of randomised Gaussian mixture model. Extensive experiments with public benchmarking Caltech-101 and BioID datasets demonstrate the effectiveness of our proposed method for localising object landmarks.
Keywords :
Gabor filters; Gaussian processes; face recognition; image resolution; matrix algebra; mixture models; probability; BioID datasets; Caltech-101 datasets; GMM; bioinspired multiresolution Gabor features; class-specific object part learning; complex-valued Gabor filter responses; computer vision problems; face recognition; facial landmark detection; generative learning; landmark specific likelihoods; object detection; object landmark localisation; object representation; pose estimation; probabilistic framework; public benchmarking; randomised Gaussian mixture model; response matrix shift operations; Estimation; Face; Feature extraction; Gaussian mixture model; Motorcycles; Training;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.397