papers AI Learner
The Github is limit! Click to go to the new site.

A Study on Action Detection in the Wild

2019-04-29
Yubo Zhang, Pavel Tokmakov, Martial Hebert, Cordelia Schmid

Abstract

The recent introduction of the AVA dataset for action detection has caused a renewed interest to this problem. Several approaches have been recently proposed that improved the performance. However, all of them have ignored the main difficulty of the AVA dataset - its realistic distribution of training and test examples. This dataset was collected by exhaustive annotation of human action in uncurated videos. As a result, the most common categories, such as stand' or sit’, contain tens of thousands of examples, where rare ones have only dozens. In this work we study the problem of action detection in highly-imbalanced dataset. Differently from previous work on handling long-tail category distributions, we begin by analyzing the imbalance in the test set. We demonstrate that the standard AP metric is not informative for the categories in the tail, and propose an alternative one - Sampled AP. Armed with this new measure, we study the problem of transferring representations from the data-rich head to the rare tail categories and propose a simple but effective approach.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1904.12993

PDF

http://arxiv.org/pdf/1904.12993


Similar Posts

Comments