NeuroHSMD: Neuromorphic Hybrid Spiking Motion Detector
Pedro Machado, Joao Filipe Ferreira, Andreas Oikonomou, T.M. McGinnity

TL;DR
NeuroHSMD is a neuromorphic motion detection algorithm that accelerates a hybrid SNN-based approach using FPGAs, achieving real-time performance without quality loss and easily portable across hardware platforms.
Contribution
This work introduces NeuroHSMD, a FPGA-accelerated neuromorphic motion detector based on a hybrid SNN, improving speed while maintaining detection quality.
Findings
Achieves ~28 fps on 720x480 videos
Maintains detection quality comparable to previous methods
Easily implemented in OpenCL for various hardware
Abstract
Vertebrate retinas are highly-efficient in processing trivial visual tasks such as detecting moving objects, yet a complex challenges for modern computers. In vertebrates, the detection of object motion is performed by specialised retinal cells named Object Motion Sensitive Ganglion Cells (OMS-GC). OMS-GC process continuous visual signals and generate spike patterns that are post-processed by the Visual Cortex. Our previous Hybrid Sensitive Motion Detector (HSMD) algorithm was the first hybrid algorithm to enhance Background subtraction (BS) algorithms with a customised 3-layer Spiking Neural Network (SNN) that generates OMS-GC spiking-like responses. In this work, we present a Neuromorphic Hybrid Sensitive Motion Detector (NeuroHSMD) algorithm that accelerates our HSMD algorithm using Field-Programmable Gate Arrays (FPGAs). The NeuroHSMD was compared against the HSMD algorithm, using…
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