English

Retina-Inspired Object Motion Segmentation for Event-Cameras

Computer Vision and Pattern Recognition 2024-12-09 v2 Neural and Evolutionary Computing Image and Video Processing

Abstract

Event-cameras have emerged as a revolutionary technology with a high temporal resolution that far surpasses standard active pixel cameras. This technology draws biological inspiration from photoreceptors and the initial retinal synapse. This research showcases the potential of additional retinal functionalities to extract visual features. We provide a domain-agnostic and efficient algorithm for ego-motion compensation based on Object Motion Sensitivity (OMS), one of the multiple features computed within the mammalian retina. We develop a method based on experimental neuroscience that translates OMS' biological circuitry to a low-overhead algorithm to suppress camera motion bypassing the need for deep networks and learning. Our system processes event data from dynamic scenes to perform pixel-wise object motion segmentation using a real and synthetic dataset. This paper introduces a bio-inspired computer vision method that dramatically reduces the number of parameters by 103\text{10}^\text{3} to 106\text{10}^\text{6} orders of magnitude compared to previous approaches. Our work paves the way for robust, high-speed, and low-bandwidth decision-making for in-sensor computations.

Keywords

Cite

@article{arxiv.2408.09454,
  title  = {Retina-Inspired Object Motion Segmentation for Event-Cameras},
  author = {Victoria Clerico and Shay Snyder and Arya Lohia and Md Abdullah-Al Kaiser and Gregory Schwartz and Akhilesh Jaiswal and Maryam Parsa},
  journal= {arXiv preprint arXiv:2408.09454},
  year   = {2024}
}
R2 v1 2026-06-28T18:15:54.640Z