CVAug 2, 2016

Automated X-ray Image Analysis for Cargo Security: Critical Review and Future Promise

arXiv:1608.01017v13 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving cargo inspection efficiency and security for customs and border agencies, but is incremental as it primarily reviews existing work.

The paper reviews the field of automated X-ray image analysis for cargo security, identifying gaps in preprocessing and image understanding methods, and proposes future research directions.

We review the relatively immature field of automated image analysis for X-ray cargo imagery. There is increasing demand for automated analysis methods that can assist in the inspection and selection of containers, due to the ever-growing volumes of traded cargo and the increasing concerns that customs- and security-related threats are being smuggled across borders by organised crime and terrorist networks. We split the field into the classical pipeline of image preprocessing and image understanding. Preprocessing includes: image manipulation; quality improvement; Threat Image Projection (TIP); and material discrimination and segmentation. Image understanding includes: Automated Threat Detection (ATD); and Automated Contents Verification (ACV). We identify several gaps in the literature that need to be addressed and propose ideas for future research. Where the current literature is sparse we borrow from the single-view, multi-view, and CT X-ray baggage domains, which have some characteristics in common with X-ray cargo.

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