Secure Aerial Surveillance using Split Learning
Yoo Jeong Ha, Minjae Yoo, Soohyun Park, Soyi Jung, and Joongheon Kim

TL;DR
This paper introduces SASSL, a split learning-based method for secure aerial surveillance that detects fires using drones without exposing raw footage, balancing privacy and resource constraints.
Contribution
It proposes a novel split learning approach for UAV-based fire detection that preserves privacy and reduces resource usage on mobile drones.
Findings
Effective fire detection with privacy preservation
Reduced computational load on UAVs
Real-time surveillance capability
Abstract
Personal monitoring devices such as cyclist helmet cameras to record accidents or dash cams to catch collisions have proliferated, with more companies producing smaller and compact recording gadgets. As these devices are becoming a part of citizens' everyday arsenal, concerns over the residents' privacy are progressing. Therefore, this paper presents SASSL, a secure aerial surveillance drone using split learning to classify whether there is a presence of a fire on the streets. This innovative split learning method transfers CCTV footage captured with a drone to a nearby server to run a deep neural network to detect a fire's presence in real-time without exposing the original data. We devise a scenario where surveillance UAVs roam around the suburb, recording any unnatural behavior. The UAV can process the recordings through its on-mobile deep neural network system or transfer the…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Caching and Content Delivery · UAV Applications and Optimization
