Introduction to statistical pattern recognition (2nd ed.)
Introduction to statistical pattern recognition (2nd ed.)
Clustering by Scale-Space Filtering
IEEE Transactions on Pattern Analysis and Machine Intelligence
Detecting Faces in Images: A Survey
IEEE Transactions on Pattern Analysis and Machine Intelligence
Constructing Boosting Algorithms from SVMs: An Application to One-Class Classification
IEEE Transactions on Pattern Analysis and Machine Intelligence
IJCAI'83 Proceedings of the Eighth international joint conference on Artificial intelligence - Volume 2
Time series classification using the Volterra connectionist model and Bayes decision theory
ICASSP'93 Proceedings of the 1993 IEEE international conference on Acoustics, speech, and signal processing: plenary, special, audio, underwater acoustics, VLSI, neural networks - Volume I
Piecewise and local image models for regularized image restoration using cross-validation
IEEE Transactions on Image Processing
A new approach for regression: visual regression approach
CIS'05 Proceedings of the 2005 international conference on Computational Intelligence and Security - Volume Part I
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Classification is a fundamental problem in data mining, which is central to various applications of information technology. The existing approaches for classification have been developed mainly based on exploring the intrinsic structure of dataset itself, less or no emphasis paid on simulating human sensation and perception. Understanding data is, however, highly relevant to how one senses and perceives the data. In this talk we initiate an approach for classification based on simulating the human visual sensation and perception principle. The core idea is to treat a data set as an image, and to mine the knowledge from the data in accordance with the way we observe and perceive the image. The algorithm, visual classification algorithm (VCA), from the proposed approach is formulated. We provide a series of simulations to demonstrate that the proposed algorithm is not only effective but also efficient. In particular, we show that VCA can very often bring a significant reduction of computation effort without loss of prediction capability, as compared with the prevalently adopted SVM approach. The simulations further show that the new approach potentially is very encouraging and useful.