| Literature DB >> 27630540 |
Yuhuang Hu1, Hongjie Liu1, Michael Pfeiffer1, Tobi Delbruck1.
Abstract
Entities:
Keywords: AER; DVS; action recognition; benchmarks; event-based vision; neuromorphic; object recognition; object tracking
Year: 2016 PMID: 27630540 PMCID: PMC5006598 DOI: 10.3389/fnins.2016.00405
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Figure 1(A) Experiment environment setup used in this project. (B) Monitor display for sequences.
Characteristics of the four provided DVS benchmark datasets.
| VOT Challenge 2015 | Tracking | 60 | 12.25 | 383.63 | 251.85 |
| TrackingDataset | Tracking | 67 | 20.70 | 342.07 | 197.77 |
| UCF-50 | Action Recognition | 6676 | 6.80 | 238.11 | 162.62 |
| Caltech-256 | Object Recognition | 30607 | 1.01 | N/A | 110.57 |
For each dataset the number of available sequence recordings, the average length of the recordings, the maximum firing rate (FR) and the average firing rate in keps (kilo events per second) are specified.
Figure 2(A) Screenshots of Datasets; (B) Amplitude Spectra of VOT Dataset DVS recording; (C) Amplitude Spectra of TrackingDataset DVS recording; (D) Amplitude Spectra of UCF-50 DVS recording; (E) Amplitude Spectra of Caltech-256 DVS recording.