TY - GEN
T1 - EBBIOT : a low-complexity tracking algorithm for surveillance in IoVT using stationary neuromorphic vision sensors
AU - Acharya, Jyotibdha
AU - Caycedo, Andres Ussa
AU - Padala, Vandana Reddy
AU - Sidhu, Rishi Raj Singh
AU - Orchard, Garrick
AU - Ramesh, Bharath
AU - Basu, Arindam
PY - 2019
Y1 - 2019
N2 - In this paper, we present EBBIOT-a novel paradigm for object tracking using stationary neuromorphic vision sensors in low-power sensor nodes for the Internet of Video Things (IoVT). Different from fully event based tracking or fully frame based approaches, we propose a mixed approach where we create event-based binary images (EBBI) that can use memory efficient noise filtering algorithms. We exploit the motion triggering aspect of neuromorphic sensors to generate region proposals based on event density counts with > 1000X less memory and computes compared to frame based approaches. We also propose a simple overlap based tracker (OT) with prediction based handling of occlusion. Our overall approach requires 7X less memory and 3X less computations than conventional noise filtering and event based mean shift (EBMS) tracking. Finally, we show that our approach results in significantly higher precision and recall compared to EBMS approach as well as Kalman Filter tracker when evaluated over 1.1 hours of traffic recordings at two different locations.
AB - In this paper, we present EBBIOT-a novel paradigm for object tracking using stationary neuromorphic vision sensors in low-power sensor nodes for the Internet of Video Things (IoVT). Different from fully event based tracking or fully frame based approaches, we propose a mixed approach where we create event-based binary images (EBBI) that can use memory efficient noise filtering algorithms. We exploit the motion triggering aspect of neuromorphic sensors to generate region proposals based on event density counts with > 1000X less memory and computes compared to frame based approaches. We also propose a simple overlap based tracker (OT) with prediction based handling of occlusion. Our overall approach requires 7X less memory and 3X less computations than conventional noise filtering and event based mean shift (EBMS) tracking. Finally, we show that our approach results in significantly higher precision and recall compared to EBMS approach as well as Kalman Filter tracker when evaluated over 1.1 hours of traffic recordings at two different locations.
KW - image converters
KW - internet of things
KW - neuromorphics
UR - https://hdl.handle.net/1959.7/uws:57122
U2 - 10.1109/SOCC46988.2019.1570553690
DO - 10.1109/SOCC46988.2019.1570553690
M3 - Conference Paper
SN - 9781728134826
SP - 318
EP - 323
BT - Proceedings of the 32th IEEE International System on Chip Conference (SOCC), September 03-06, 2019, Singapore
PB - IEEE
T2 - International System-on-Chip Conference
Y2 - 3 September 2019
ER -