Title
Sparse flexible models of local features
Abstract
In recent years there has been growing interest in recognition models using local image features for applications ranging from long range motion matching to object class recognition systems. Currently, many state-of-the-art approaches have models involving very restrictive priors in terms of the number of local features and their spatial relations. The adoption of such priors in those models are necessary for simplifying both the learning and inference tasks. Also, most of the state-of-the-art learning approaches are semi-supervised batch processes, which considerably reduce their suitability in dynamic environments, where unannotated new images are continuously presented to the learning system. In this work we propose: 1) a new model representation that has a less restrictive prior on the geometry and number of local features, where the geometry of each local feature is influenced by its k closest neighbors and models may contain hundreds of features; and 2) a novel unsupervised on-line learning algorithm that is capable of estimating the model parameters efficiently and accurately. We implement a visual class recognition system using the new model and learning method proposed here, and demonstrate that our system produces competitive classification and localization results compared to state-of-the-art methods. Moreover, we show that the learning algorithm is able to model not only classes with consistent texture (e.g., faces), but also classes with shape only (e.g., leaves), classes with a common shape but with a great variability in terms of internal texture (e.g., cups), and classes of flexible objects (e.g., snake).
Year
DOI
Venue
2006
10.1007/11744078_3
ECCV (3)
Keywords
Field
DocType
state-of-the-art approach,state-of-the-art learning approach,on-line learning algorithm,new model,new model representation,model parameter,class recognition system,sparse flexible model,local image feature,local feature,recognition model,batch process,image features,spatial relation
Spatial relation,Computer vision,Computer science,Feature (computer vision),Supervised learning,Image segmentation,Unsupervised learning,Artificial intelligence,Prior probability,Machine learning,Standard test image,Cognitive neuroscience of visual object recognition
Conference
Volume
ISSN
ISBN
3953
0302-9743
3-540-33836-5
Citations 
PageRank 
References 
25
1.35
17
Authors
2
Name
Order
Citations
PageRank
Gustavo Carneiro1115369.37
D. G. Lowe2157181413.60