Title :
From bits to information with learning machines: theory and applications
Author_Institution :
Center for Biol. & Comput. Learning, MIT, MA, USA
Abstract :
Summary form only given. Learning is becoming the central problem in trying to understand intelligence and in trying to develop intelligent machines. The paper outlines some previous efforts in developing machines that learn. It sketches the authors´s work on statistical learning theory and theoretical results on the problem of classification and function approximation that connect regularization theory and support vector machines. The main application focus is classification (and regression) in various domains-such as sound, text, video and bioinformatics. In particular, the paper describe the evolution of a trainable object detection system for classifying objects-such as faces and people and cars-in complex cluttered images. Finally, it speculates on the implications of this research for how the brain works and review some data which provide a glimpse of how 3D objects are represented in the visual cortex
Keywords :
function approximation; image representation; learning automata; learning systems; object detection; signal classification; statistical analysis; visual perception; 3D object representation; bioinformatics; brain; cars; cluttered images; faces; function approximation; intelligent machines; learning machines; object classification; people; regression; regularization theory; research; sound; statistical learning theory; support vector machines; text; trainable object detection system; video; visual cortex; Bioinformatics; Face detection; Focusing; Function approximation; Learning systems; Machine learning; Object detection; Statistical learning; Support vector machine classification; Support vector machines;
Conference_Titel :
Adaptive Systems for Signal Processing, Communications, and Control Symposium 2000. AS-SPCC. The IEEE 2000
Conference_Location :
Lake Louise, Alta.
Print_ISBN :
0-7803-5800-7
DOI :
10.1109/ASSPCC.2000.882439