Work place: Dept. of Electrical Engineering, School of Engineering, Gautam Buddha University, Gautam Buddha Nagar, INDIA
E-mail: mahmadiitr@gmail.com
Website:
Research Interests: Autonomic Computing, Image Compression, Image Manipulation, Image Processing, Medical Image Computing, Computing Platform
Biography
M.A. Ansari received B.Tech. (Electrical Engineering) in 1998 from AMU, Aligarh, India, M.Tech. & Ph.D. (Electrical Engineering) in 2001 & 2009 respectively from Indian Institute of Technology, Roorkee, India. The author is associated with Gautam Buddha University and is currently working in the Department of Electrical Engineering. He has wide national and international experience of teaching and has visited several countries. He has published several papers in reputed national and international journals and conferences. His research interest includes medical image& signal processing, Biomedical Instrumentation, Soft computing and wavelet applications. He is senior member of IEEE and ISIAM.
By Shivkaran Ravidas M.A. Ansari
DOI: https://doi.org/10.5815/ijisa.2019.03.06, Pub. Date: 8 Mar. 2019
The aim of this paper is to detect multi-view faces using deep convolutional neural network (DCNN). Multi-view face detection is a challenging issue due to wide changes in appearance under different pose expression and illumination conditions. To address challenges, we designed a deep learning scheme with different network structures to enhance the multi view faces. More specifically, we design cascade architecture on convolutional neural networks (CNNs) which quickly reject non-face regions. Implementation, detection and retrieval of faces will be obtained with the help of direct visual matching technology. Further, a probabilistic calculation of resemblance among the images of face will be conducted on the basis of the Bayesian analysis for achieving detection of various faces. Experiment detects faces with ±90 degree out of plane rotations. Fine-tuned AlexNet is used to detect multi view faces. For this work, we extracted examples of training from AFLW (Annotated Facial Landmarks in the Wild) dataset that involve 21K images with 24K annotations of the face.
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