AI RESEARCH
Hyperspectral Trajectory Image for Multi-Month Trajectory Anomaly Detection
arXiv CS.LG
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ArXi:2603.25255v1 Announce Type: cross Trajectory anomaly detection underpins applications from fraud detection to urban mobility analysis. Dense GPS methods preserve fine-grained evidence such as abnormal speeds and short-duration events, but their quadratic cost makes multi-month analysis intractable; consequently, no existing approach detects anomalies over multi-month dense GPS trajectories. The field instead relies on scalable sparse stay-point methods that discard this evidence, forcing separate architectures for each regime and preventing knowledge transfer.