Brain-Inspired Online Adaptation for Remote Sensing with Spiking Neural Network
Dexin Duan, Peilin liu, Bingwei Hui, Fei Wen

TL;DR
This paper introduces a novel online adaptation framework for spiking neural networks tailored for remote sensing on edge devices, emphasizing energy efficiency and rapid environmental adaptation.
Contribution
It presents the first online adaptation method for SNNs, including an efficient unsupervised algorithm, adaptive activation scaling, and confidence-based instance weighting.
Findings
Outperforms existing domain adaptation methods across multiple tasks.
Enables energy-efficient, fast online adaptation suitable for edge devices.
Demonstrates robustness under varying weather conditions.
Abstract
On-device computing, or edge computing, is becoming increasingly important for remote sensing, particularly in applications like deep network-based perception on on-orbit satellites and unmanned aerial vehicles (UAVs). In these scenarios, two brain-like capabilities are crucial for remote sensing models: (1) high energy efficiency, allowing the model to operate on edge devices with limited computing resources, and (2) online adaptation, enabling the model to quickly adapt to environmental variations, weather changes, and sensor drift. This work addresses these needs by proposing an online adaptation framework based on spiking neural networks (SNNs) for remote sensing. Starting with a pretrained SNN model, we design an efficient, unsupervised online adaptation algorithm, which adopts an approximation of the BPTT algorithm and only involves forward-in-time computation that significantly…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Image Fusion Techniques · Remote Sensing in Agriculture
MethodsSpiking Neural Networks
