Title :
Activity Recognition Applications from Contextual Video-Text Fusion
Author :
Levchuk, Georgiy ; Shabarekh, Charlotte
Abstract :
In this paper, we propose a demonstration of our capabilities in fusing information extracted from correlated video and text documents. We generate a probabilistic association between entities mentioned in text and detected in video data by jointly optimizing the measure of appearance and behavior similarity. We manage uncertainty that arises from non-overlapping (conflicting) features in the sources by maintaining multiple hypotheses. In work on synthetic data that have few overlapping features between sources, we have shown that our method of soft fusion has increased activity recognition scores over both single source processing and non-probabilistic (hard) fusion. When sources have over 60% overlapping features, hard fusion outperforms single source and soft fusion. Our approach is flexible to determine whether soft or hard fusion is appropriate for a dataset and selects the correct fusion algorithm to yield the highest activity recognition results.
Keywords :
image fusion; image motion analysis; probability; text analysis; text detection; video signal processing; activity recognition applications; activity recognition scores; behavior similarity; contextual video-text fusion; information fusion; nonoverlapping features; nonprobabilistic fusion; probabilistic association; single source processing; synthetic data; text documents; video data detection; video documents; Accuracy; Computer vision; Data mining; Feature extraction; Sensors; Text recognition;
Conference_Titel :
Applications and Computer Vision Workshops (WACVW), 2015 IEEE Winter
Conference_Location :
Waikoloa, HI
DOI :
10.1109/WACVW.2015.12