MCBoost: Multiple Classifier Boosting for Perceptual Co-clustering of Images and Visual Features
Kim, Tae-kyun, Cipolla, Roberto
–Neural Information Processing Systems
We present a new co-clustering problem of images and visual features. The problem involvesa set of non-object images in addition to a set of object images and features to be co-clustered. Co-clustering is performed in a way that maximises discrimination of object images from non-object images, thus emphasizing discriminative features.This provides a way of obtaining perceptual joint-clusters of object images and features. We tackle the problem by simultaneously boosting multiplestrong classifiers which compete for images by their expertise. Each boosting classifier is an aggregation of weak-learners, i.e. simple visual features. The obtained classifiers are useful for object detection tasks which exhibit multimodalities, e.g.multi-category and multi-view object detection tasks. Experiments on a set of pedestrian images and a face data set demonstrate that the method yields intuitive image clusters with associated features and is much superior toconventional boosting classifiers in object detection tasks.
Neural Information Processing Systems
Dec-31-2009