Alen Docef, Ph.D.

Associate Professor and Associate Chair, Department of Electrical and Computer Engineering

  • Richmond VA UNITED STATES
  • Engineering West Hall Room 242
adocef@vcu.edu

Professor Docef's research interests lie in medical image processing

Contact

Media

Social

Industry Expertise

Education/Learning
Research

Areas of Expertise

Medical Image Processing
Signal Processor Architectures
Document Compression for Archiving
Efficient Error-Resilient Network-Optimized Image and Video Coding

Education

Georgia Institute of Technology

Ph.D.

Electrical and Computer Engineering

1998

Georgia Institute of Technology

M.S.E.E.

Engineering

1992

Polytechnic Institute of Bucharest

B.E.

Engineering

1991

Affiliations

  • IEEE Senior Member

Selected Articles

Reconstruction of a cone-beam CT image via forward iterative projection matching

Medical Physics

2010

To demonstrate the feasibility of reconstructing a cone-beam CT(CBCT)image by deformably altering a prior fan-beam CT (FBCT) image such that it matches the anatomy portrayed in the CBCT projection data set.

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On-line versus Off-line Accelerated Kernel Feature Analysis: Application to Computer-Aided Detection of Polyps in CT Colonography

Signal Processing

2010

A semi-supervised learning method, the on-line accelerated kernel feature analysis (On-line AKFA) is presented. In On-line AKFA, features are extracted while data are being fed to the algorithm in small batches as the algorithm proceeds. The paper compares and contrasts the use of On-line AKFA and Off-line AKFA in CT colonography. On-line AKFA provides the flexibility to allow the feature space to dynamically adjust to changes in the input data with time during the training phase. The computational time, reconstruction accuracy, projection variance, and classification performance of the proposed method are experimentally evaluated for kernel principal component analysis (KPCA), Off-line AKFA, and On-line AKFA. Experimental results demonstrate a significant reduction in computation time for On-line AKFA compared to the other feature extraction methods considered in this paper.

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Reconstruction of 4D deformed CT for moving anatomy

International Journal of Computer Assisted Radiology and Surgery

2008

To develop a 4DCT reconstruction technique that improves time resolution when the anatomy moves with respiration.

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