A comparison of 3D interest point descriptors with application to airport baggage object detection in complex CT imagery

Date published

2013-02-16

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Elsevier

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Article

ISSN

0031-3203

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Citation

Flitton GT, Breckon TP, Megherbi Baouallagui N. (2013) A comparison of 3D interest point descriptors with application to airport baggage object detection in complex CT imagery. Pattern Recognition, Volume 46, Issue 9, September 2013, pp. 2420-2436

Abstract

We present an experimental comparison of 3D feature descriptors with application to threat detection in Computed Tomography (CT) airport baggage imagery. The detectors range in complexity from a basic local density descriptor, through local region histograms and three-dimensional (3D) extensions to both to the RIFT descriptor and the seminal SIFT feature descriptor. We show that, in the complex CT imagery domain containing a high degree of noise and imaging artefacts, a specific instance object recognition system using simpler descriptors appears to outperform a more complex RIFT/SIFT solution. Recognition rates in excess of 95% are demonstrated with minimal false-positive rates for a set of exemplar 3D objects.

Description

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Github

Keywords

CT baggage scan, Threat detection, Object recognition, 3D feature descriptors, CT object SIFT

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Attribution-NonCommercial-NoDerivatives 4.0 International

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