CVROApr 3, 2019

A Visual Neural Network for Robust Collision Perception in Vehicle Driving Scenarios

arXiv:1904.02074v116 citations
Originality Incremental advance
AI Analysis

This work addresses collision perception for autonomous vehicles, but it is incremental as it builds upon previous models.

The paper tackled visual collision detection in complex vehicle driving scenarios by proposing an adaptive inhibition mechanism inspired by locust neurons, which effectively extracted colliding cues from dynamic scenes and demonstrated feasibility in real-world tests.

This research addresses the challenging problem of visual collision detection in very complex and dynamic real physical scenes, specifically, the vehicle driving scenarios. This research takes inspiration from a large-field looming sensitive neuron, i.e., the lobula giant movement detector (LGMD) in the locust's visual pathways, which represents high spike frequency to rapid approaching objects. Building upon our previous models, in this paper we propose a novel inhibition mechanism that is capable of adapting to different levels of background complexity. This adaptive mechanism works effectively to mediate the local inhibition strength and tune the temporal latency of local excitation reaching the LGMD neuron. As a result, the proposed model is effective to extract colliding cues from complex dynamic visual scenes. We tested the proposed method using a range of stimuli including simulated movements in grating backgrounds and shifting of a natural panoramic scene, as well as vehicle crash video sequences. The experimental results demonstrate the proposed method is feasible for fast collision perception in real-world situations with potential applications in future autonomous vehicles.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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