Object Detection using Particle Swarm Optimisation and Kalman Filter to Track Partially occluded Targets

Keywords: Motion estimation, Kalman filter, Motion compensation, Particle swarm optimisation, Infrared, Tracking

Abstract

Motion estimation, object detection, and tracking have been actively pursued by researchers in the field of real time video processing. In the present work, a new algorithm is proposed to automatically detect objects using revised local binary pattern (m-LBP) for object detection. The detected object was tracked and its location estimated using the Kalman filter, whose state covariance matrix was tuned using particle swarm optimisation (PSO). PSO, being a nature inspired algorithm, is a well proven optimization technique. This algorithm was applied to important real-world problems of partially-occluded objects in infrared videos. Algorithm validation was performed by realizing a thermal imager, and this novel algorithm was implemented in it to demonstrate that the proposed algorithm is more efficient and produces better results in motion estimation for partially-occluded objects. It is also shown that track convergence is 56% faster in the PSO-Kalman algorithm than tracking with Kalman-only filter.

Published
2022-01-05
How to Cite
Singh, H., Pant, M., & Khare, S. (2022). Object Detection using Particle Swarm Optimisation and Kalman Filter to Track Partially occluded Targets. Defence Science Journal, 72(1), 83-90. https://doi.org/10.14429/dsj.72.17502
Section
Electronics & Communication Systems