Fusion of color and infrared video for moving human detection
Pattern Recognition
Vision-based motion estimation for interaction with mobile devices
Computer Vision and Image Understanding
Differential Evolution as a viable tool for satellite image registration
Applied Soft Computing
Wavelet-based image registration technique for high-resolution remote sensing images
Computers & Geosciences
Progressive image registration based on probability boosting tree
AICI'12 Proceedings of the 4th international conference on Artificial Intelligence and Computational Intelligence
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A computational vision approach is presented for the estimation of 2-D translation, rotation, and scale from two partially overlapping images. The approach results in a fast method that produces good results even when large rotation and translation have occurred between the two frames and the images are devoid of significant features. An illuminant direction estimation method is first used to obtain an initial estimation of camera rotation. A small number of feature points are then located, using a Gabor wavelet model for detecting local curvature discontinuities. An initial estimate of scale and translation is obtained by pairwise matching of the feature points detected from both frames. Finally, hierarchical feature matching is performed to obtain an accurate estimate of translation, rotation and scale. A method for error analysis of matching results is also presented. Experiments with synthetic and real images show that this algorithm yields accurate results when the scale of the images differ by up to 10%, the overlap between the two frames is as small as 23%, and the camera rotation between the two frames is significant. Experimental results and applications are presented