CVLGROOct 15, 2019

A Hybrid Compact Neural Architecture for Visual Place Recognition

arXiv:1910.06840v360 citations
Originality Incremental advance
AI Analysis

This work addresses visual navigation for robotics by bridging neuroscience and computer science approaches, though it is incremental in combining existing neural models.

The paper tackled visual place recognition by proposing a hybrid neural architecture combining FlyNet and a continuous attractor neural network, achieving 87% AUC under day-to-night transitions and up to 310 times faster performance compared to state-of-the-art methods.

State-of-the-art algorithms for visual place recognition, and related visual navigation systems, can be broadly split into two categories: computer-science-oriented models including deep learning or image retrieval-based techniques with minimal biological plausibility, and neuroscience-oriented dynamical networks that model temporal properties underlying spatial navigation in the brain. In this letter, we propose a new compact and high-performing place recognition model that bridges this divide for the first time. Our approach comprises two key neural models of these categories: (1) FlyNet, a compact, sparse two-layer neural network inspired by brain architectures of fruit flies, Drosophila melanogaster, and (2) a one-dimensional continuous attractor neural network (CANN). The resulting FlyNet+CANN network incorporates the compact pattern recognition capabilities of our FlyNet model with the powerful temporal filtering capabilities of an equally compact CANN, replicating entirely in a hybrid neural implementation the functionality that yields high performance in algorithmic localization approaches like SeqSLAM. We evaluate our model, and compare it to three state-of-the-art methods, on two benchmark real-world datasets with small viewpoint variations and extreme environmental changes - achieving 87% AUC results under day to night transitions compared to 60% for Multi-Process Fusion, 46% for LoST-X and 1% for SeqSLAM, while being 6.5, 310, and 1.5 times faster, respectively.

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