Title :
Transformation Invariant On-Line Target Recognition
Author :
Iftekharuddin, Khan M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Memphis, Memphis, TN, USA
fDate :
6/1/2011 12:00:00 AM
Abstract :
Transformation invariant automatic target recognition (ATR) has been an active research area due to its widespread applications in defense, robotics, medical imaging and geographic scene analysis. The primary goal for this paper is to obtain an on-line ATR system for targets in presence of image transformations, such as rotation, translation, scale and occlusion as well as resolution changes. We investigate biologically inspired adaptive critic design (ACD) neural network (NN) models for on-line learning of such transformations. We further exploit reinforcement learning (RL) in ACD framework to obtain transformation invariant ATR. We exploit two ACD designs, such as heuristic dynamic programming (HDP) and dual heuristic dynamic programming (DHP) to obtain transformation invariant ATR. We obtain extensive statistical evaluations of proposed on-line ATR networks using both simulated image transformations and real benchmark facial image database, UMIST, with pose variations. Our simulations show promising results for learning transformations in simulated images and authenticating out-of plane rotated face images. Comparing the two on-line ATR designs, HDP outperforms DHP in learning capability and robustness and is more tolerant to noise. The computational time involved in HDP is also less than that of DHP. On the other hand, DHP achieves a 100% success rate more frequently than HDP for individual targets, and the residual critic error in DHP is generally smaller than that of HDP. Mathematical analyses of both our RL-based on-line ATR designs are also obtained to provide a sufficient condition for asymptotic convergence in a statistical average sense.
Keywords :
dynamic programming; face recognition; heuristic programming; image resolution; learning (artificial intelligence); mathematical analysis; neural nets; object recognition; pose estimation; ACD design; ACD framework; ACD neural network model; RL-based online ATR design; asymptotic convergence; automatic target recognition; biologically inspired adaptive critic design; dual heuristic dynamic programming; image occlusion; image resolution; image rotation; image scale; image transformation; image translation; learning capability; mathematical analysis; online ATR system; online learning; online target recognition; out-of plane rotated face image; pose variation; reinforcement learning; residual critic error; simulated image; statistical average; statistical evaluation; transformation invariant ATR; Artificial neural networks; Biology; Computational modeling; Cost function; Dynamic programming; Image resolution; Training; Active on-line learning; automatic target recognition; dual heuristic dynamic programming; face authentication; heuristic dynamic programming; image transformation invariance; reinforcement learning; Algorithms; Artificial Intelligence; Computer Simulation; Image Interpretation, Computer-Assisted; Models, Theoretical; Online Systems; Pattern Recognition, Automated;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2132737