Alan Matthew Finn
Sikorsky Aircraft
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Publication
Featured researches published by Alan Matthew Finn.
international conference on acoustics, speech, and signal processing | 2010
Zhen Jia; Hongcheng Wang; Rodrigo E. Caballero; Ziyou Xiong; Jianwei Zhao; Alan Matthew Finn
In this paper we present a novel algorithm for improving the visibility of surveillance videos degraded by fog and/or rain. The proposed algorithm adaptively enhances the global and local contrast of a surveillance video. The algorithm is inspired on the human visual system, and accounts for the perceptual sensitivity to noise, compression artifacts, and the texture of image content. The model is combined with the classic Contrast Limited Adaptive Histogram Equalization (CLAHE) method to adaptively enhance surveillance videos. We have implemented a real-time video enhancement system and performed extensive experimental testing over a video database containing common surveillance videos recorded under fog and rain conditions. The proposed approach significantly improves the visual quality of surveillance videos by removing fog/rain effects, as well as reducing noise and artifacts.
asian conference on pattern recognition | 2011
Zhen Jia; Hongcheng Wang; Ziyou Xiong; Alan Matthew Finn
In this paper we propose a novel face hallucination algorithm to synthesize a high-resolution face image from several low-resolution input face images. As described in Liu et al. [8]s work, face hallucination uses two models: a global parametric model which synthesizes global face shapes from eigenfaces, and a local parametric model which enhances the local high frequency details. We follow a similar process to develop a robust face hallucination algorithm. Firstly, we obtain eigenfaces from a number of low resolution face images extracted from a video sequence using a face tracking algorithm. Then we compute the difference between the interpolated low-resolution face and the mean face, and use this difference face as the query to retrieve approximate sparse eigenfaces representation. The eigenfaces are combined using the coefficients obtained from sparse representation and added into the interpolated low-resolution face. In this way, the global shape of the interpolated low resolution face can be successfully enhanced. Secondly, we improve the example-based super-resolution method [7] for local high frequency information enhancement. Our proposed algorithm uses the Approximate Nearest Neighbors (ANN) search method to find a number of nearest neighbors for a stack of queries, instead of finding the exact match for each low frequency patch as presented in [7]. Median filtering is used to remove the noise from the nearest neighbors in order to enhance the signal. Our proposed algorithm uses sparse representation and the ANN method to enhance both global face shape and local high frequency information while greatly improving the processing speed, as confirmed empirically.
Archive | 2005
Pengju Kang; Alan Matthew Finn; Thomas M. Gillis; Ollencio D'souza
Archive | 2006
Lin Lin; Ziyou Xiong; Alan Matthew Finn; Pei-Yuan Peng; Pengju Kang; Mauro Jorge Atalla; Meghna Misra; Christian Maria Netter
Archive | 2007
Ziyou Xiong; Pei-Yuan Peng; Alan Matthew Finn; Muhidin A. Lelic
Archive | 2011
Haifeng Zhu; Vijaya Ramaraju Lakamraju; Alan Matthew Finn
Archive | 2005
Pengju Kang; Alan Matthew Finn; Robert N. Tomastik; Thomas M. Gillis; Ziyou Xiong; Lin Lin; Pei-Yuan Peng
Archive | 2004
Alexander I. Khibnik; Mauro Jorge Atalla; Alan Matthew Finn; Mark W. Davis; Jun Ma; James P. Cycon; Peter F. Horbury; Andreas P. F. Bernhard
Archive | 2005
Alan Matthew Finn; Pengju Kang; Ziyou Xiong; Lin Lin; Pei-Yuan Peng; Meghna Misra; Christian Maria Netter
Archive | 2009
Alan Matthew Finn; Joseph Zacchio; Michael G. O'Callaghan; Jimmy Lih-Min Yeh