Structural-RNN: Deep Learning on Spatio-Temporal Graphs
Abstract
Deep Recurrent Neural Network architectures, though remarkably capable at modeling sequences, lack an intuitive high-level spatio-temporal structure. That is while many problems in computer vision inherently have an underlying high-level structure and can benefit from it. Spatio-temporal graphs are a popular tool for imposing such high-level intuitions in the formulation of real world problems. In this paper, we propose an approach for combining the power of high-level spatio-temporal graphs and sequence learning success of Recurrent Neural Networks~(RNNs). We develop a scalable method for casting an arbitrary spatio-temporal graph as a rich RNN mixture that is feedforward, fully differentiable, and jointly trainable. The proposed method is generic and principled as it can be used for transforming any spatio-temporal graph through employing a certain set of well defined steps. The evaluations of the proposed approach on a diverse set of problems, ranging from modeling human motion to object interactions, shows improvement over the state-of-the-art with a large margin. We expect this method to empower new approaches to problem formulation through high-level spatio-temporal graphs and Recurrent Neural Networks.
Cite
@article{arxiv.1511.05298,
title = {Structural-RNN: Deep Learning on Spatio-Temporal Graphs},
author = {Ashesh Jain and Amir R. Zamir and Silvio Savarese and Ashutosh Saxena},
journal= {arXiv preprint arXiv:1511.05298},
year = {2016}
}
Comments
CVPR 2016 (Oral)