| Literature DB >> 29750138 |
Cong Shi1, Jiajun Li2, Ying Wang2, Gang Luo1.
Abstract
This paper presents a lightweight statistical learning framework potentially suitable for low-cost event-based vision systems, where visual information is captured by a dynamic vision sensor (DVS) and represented as an asynchronous stream of pixel addresses (events) indicating a relative intensity change on those locations. A simple random ferns classifier based on randomly selected patch-based binary features is employed to categorize pixel event flows. Our experimental results demonstrate that compared to existing event-based processing algorithms, such as spiking convolutional neural networks (SCNNs) and the state-of-the-art bag-of-events (BoE)-based statistical algorithms, our framework excels in high processing speed (2× faster than the BoE statistical methods and >100× faster than previous SCNNs in training speed) with extremely simple online learning process, and achieves state-of-the-art classification accuracy on four popular address-event representation data sets: MNIST-DVS, Poker-DVS, Posture-DVS, and CIFAR10-DVS. Hardware estimation shows that our algorithm will be preferable for low-cost embedded system implementations.Entities:
Keywords: Address-event representation (AER); dynamic vision sensor (DVS); neuromorphic processing; random ferns; statistical learning
Year: 2018 PMID: 29750138 PMCID: PMC5937990 DOI: 10.1109/ACCESS.2018.2823260
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.367