NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Due to the lapse in federal government funding, NASA is not updating this website. We sincerely regret this inconvenience.

Back to Results
Recognition of partially occluded threat objects using the annealed Hopefield networkRecognition of partially occluded objects has been an important issue to airport security because occlusion causes significant problems in identifying and locating objects during baggage inspection. The neural network approach is suitable for the problems in the sense that the inherent parallelism of neural networks pursues many hypotheses in parallel resulting in high computation rates. Moreover, they provide a greater degree of robustness or fault tolerance than conventional computers. The annealed Hopfield network which is derived from the mean field annealing (MFA) has been developed to find global solutions of a nonlinear system. In the study, it has been proven that the system temperature of MFA is equivalent to the gain of the sigmoid function of a Hopfield network. In our early work, we developed the hybrid Hopfield network (HHN) for fast and reliable matching. However, HHN doesn't guarantee global solutions and yields false matching under heavily occluded conditions because HHN is dependent on initial states by its nature. In this paper, we present the annealed Hopfield network (AHN) for occluded object matching problems. In AHN, the mean field theory is applied to the hybird Hopfield network in order to improve computational complexity of the annealed Hopfield network and provide reliable matching under heavily occluded conditions. AHN is slower than HHN. However, AHN provides near global solutions without initial restrictions and provides less false matching than HHN. In conclusion, a new algorithm based upon a neural network approach was developed to demonstrate the feasibility of the automated inspection of threat objects from x-ray images. The robustness of the algorithm is proved by identifying occluded target objects with large tolerance of their features.
Document ID
19930010277
Acquisition Source
Legacy CDMS
Document Type
Other
Authors
Kim, Jung H.
(North Carolina Agricultural and Technical State Univ. Greensboro, NC, United States)
Yoon, Sung H.
(North Carolina Agricultural and Technical State Univ. Greensboro, NC, United States)
Park, Eui H.
(North Carolina Agricultural and Technical State Univ. Greensboro, NC, United States)
Ntuen, Celestine A.
(North Carolina Agricultural and Technical State Univ. Greensboro, NC, United States)
Date Acquired
September 6, 2013
Publication Date
December 12, 1992
Publication Information
Publication: The Center for Aerospace Research: A NASA Center of Excellence at North Carolina Agricultural and Technical State University
Subject Category
Man/System Technology And Life Support
Accession Number
93N19466
Distribution Limits
Public
Copyright
Public Use Permitted.
No Preview Available