Capturing long-tail distributions of object subcategories
Abstract
We argue that object subcategories follow a long-tail distribution: a few subcategories are common, while many are rare. We describe distributed algorithms for learning large- mixture models that capture long-tail distributions, which are hard to model with current approaches. We introduce a generalized notion of mixtures (or subcategories) that allow for examples to be shared across multiple subcategories. We optimize our models with a discriminative clustering algorithm that searches over mixtures in a distributed, "brute-force" fashion. We used our scalable system to train tens of thousands of deformable mixtures for VOC objects. We demonstrate significant performance improvements, particularly for object classes that are characterized by large appearance variation.
BibTeX
@conference{Zhu-2014-121193,author = {Xiangxin Zhu and Dragomir Anguelov and Deva Ramanan},
title = {Capturing long-tail distributions of object subcategories},
booktitle = {Proceedings of (CVPR) Computer Vision and Pattern Recognition},
year = {2014},
month = {June},
pages = {915 - 922},
}