Home /Research /Gibbs Sampling Strategies for Semantic Perception of Streaming Video Data
PERCEPTION

Gibbs Sampling Strategies for Semantic Perception of Streaming Video Data

Yogesh Girdhar, Gregory Dudek

Year
2015
Access
Open access

Abstract

Topic modeling of streaming sensor data can be used for high level perception of the environment by a mobile robot. In this paper we compare various Gibbs sampling strategies for topic modeling of streaming spatiotemporal data, such as video captured by a mobile robot. Compared to previous work on online topic modeling, such as o-LDA and incremental LDA, we show that the proposed technique results in lower online and final perplexity, given the realtime constraints.

Keywords

cs.ROcs.LG

Related papers

Browse all PERCEPTION papers