Title
Visual Tracking Based on Convolutional Deep Belief Network
Abstract
Visual tracking is an important task within the field of computer vision. Recently, deep neural networks have gained significant attention thanks to their success on learning image features. But the existing deep neural networks applied in visual tracking are full-connected complicated architectures with large amount of redundant parameters that would be low efficiently to learn. We tackle this problem by using a novel convolutional deep belief network (CDBN) with convolution, weights sharing and pooling to have much fewer parameters to learn, in addition to gain translation invariance which would benefit the tracker performance. Theoretical analysis and experimental evaluations on an open tracker benchmark demonstrate our CDBN based tracker is more accurate by improving tracking success rate 22.6% and tracking precision 62.8% on average, while maintaining low computation cost by reduces the number of parameters to 44.4%, compared to DLT, another well-known deep learning tracker. Meanwhile, our tracker can achieve real-time performance by a graphics processing unit (GPU) speedup of 2.61 times on average and up to 3.08 times.
Year
DOI
Venue
2015
10.1007/978-3-319-23216-4_8
ADVANCED PARALLEL PROCESSING TECHNOLOGIES, APPT 2015
Keywords
Field
DocType
Visual tracking,Deep learning,Convolutional deep belief network,GPU
Computer vision,Pattern recognition,Convolution,Feature (computer vision),Computer science,Deep belief network,Pooling,Eye tracking,Artificial intelligence,Deep learning,Graphics processing unit,Speedup
Conference
Volume
ISSN
Citations 
9231
0302-9743
0
PageRank 
References 
Authors
0.34
14
3
Name
Order
Citations
PageRank
Dan Hu101.01
Xingshe Zhou21621136.85
Junjie Wu355147.60