Anomaly Detection in Clutter using Spectrally Enhanced Ladar
Puneet S Chhabra, Andrew M Wallace, James R Hopgood

TL;DR
This paper introduces a novel algorithm for detecting spectral and temporal anomalies in full-waveform multi-spectral Ladar data, enabling identification of hidden objects and anomalies in cluttered forest environments.
Contribution
It presents a new anomaly detection method using spectral and temporal patterns learned via a discriminative subspace, specifically applied to FW-Multispectral Ladar data.
Findings
Successfully detects man-made objects in dense vegetation
Identifies anomalies hidden behind foliage
Supports tree species classification
Abstract
Discrete return (DR) Laser Detection and Ranging (Ladar) systems provide a series of echoes that reflect from objects in a scene. These can be first, last or multi-echo returns. In contrast, Full-Waveform (FW)-Ladar systems measure the intensity of light reflected from objects continuously over a period of time. In a camouflaged scenario, e.g., objects hidden behind dense foliage, a FW-Ladar penetrates such foliage and returns a sequence of echoes including buried faint echoes. The aim of this paper is to learn local-patterns of co-occurring echoes characterised by their measured spectra. A deviation from such patterns defines an abnormal event in a forest/tree depth profile. As far as the authors know, neither DR or FW-Ladar, along with several spectral measurements, has not been applied to anomaly detection. This work presents an algorithm that allows detection of spectral and…
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