by Lu, Qiang

Abstract (Summary)
X-ray devices have demonstrated the ability to characterize a material at the molecular and atomic levels. This ability is particularly important for detecting plastic explosives, where object shape information cannot be used. X-ray devices are relatively inexpensive compared to many other detection technologies. X-ray technology is considered as the technology for detecting illicit materials. Using x-ray technology, a material's density- and effective atomic number or Zeff-related information can be determined. In theory, an illicit material can be identified using those two pieces of information.

This dissertation discusses explosives detection in passenger luggage bags. The x-ray technology used is called R-L multi-sensing technology. The R-L technology was developed by researchers at Virginia Tech. It is the first true multisensing technology used for explosive detection. It uses dual-energy transmission and scatter technologies to obtain characteristic values of an object, i.e., R and L. The material type of this object can then be determined using R-L plane. The characteristic value R is computed using signals from dual-energy transmission modality. R is related to Zeff. The characteristic value L is computed using signals from low-energy transmission and scatter modalities. L is related to density. Compared to single-sensing technologies and pseudo multi-sensing technologies, the detection accuracy of R-L technology should be much higher.

The R and L values of an object can only be computed from an object's true gray levels. True gray level refers to the measured gray level of an object when it is not overlapped with any other objects. The problem is objects in a bag almost always overlap with other objects. Being able to identify the object of interest and remove the overlap effects becomes the key issue that needs to be solved.

The discussion in this dissertation focuses on the development of the image-processing system used on this multiple sensor system. This image-processing system is comprised of four steps. The first step is to spatially register images from all the sensing modalities. The second step is to remove noise using the edge-preserving smoothing algorithm. The third step is to segment image into regions with relatively uniform gray levels. The fourth step is to compute the true gray levels for objects of interest using the mathematical models for removing overlapping effects. Most of the research focuses on developing a robust segmentation algorithm for segmenting x-ray bag images and developing mathematical models for removing object overlapping effects. The unique contribution of this dissertation includes the development of those mathematical models used for removing object-overlapping effects, and the development of the algorithm for determining an object's true gray levels.

The experimental verification shows that the algorithms for registration, smoothing, and segmentation work well. The algorithm that computes the true gray levels of an object can perform the computation quite precisely in transmission modality. However, the methods that were developed for computing an object's true gray levels in scatter images are much less accurate.

Bibliographical Information:

Advisor:Dr. James Armstrong; Dr. Scott Midkiff; Dr. Jeffrey Reed; Dr. Earl Kline; Dr. Richard W. Conners; Dr. A. Lynn Abbott

School:Virginia Polytechnic Institute and State University

School Location:USA - Virginia

Source Type:Master's Thesis

Keywords:electrical and computer engineering


Date of Publication:08/13/1999

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