Behnke, Sven.

Hierarchical Neural Networks for Image Interpretation [electronic resource] / by Sven Behnke. - Berlin, Heidelberg : Springer Berlin Heidelberg, 2003. - XIII, 227 p. online resource. - Lecture Notes in Computer Science, 2766 0302-9743 ; . - Lecture Notes in Computer Science, 2766 .

I. Theory -- Neurobiological Background -- Related Work -- Neural Abstraction Pyramid Architecture -- Unsupervised Learning -- Supervised Learning -- II. Applications -- Recognition of Meter Values -- Binarization of Matrix Codes -- Learning Iterative Image Reconstruction -- Face Localization -- Summary and Conclusions.

Human performance in visual perception by far exceeds the performance of contemporary computer vision systems. While humans are able to perceive their environment almost instantly and reliably under a wide range of conditions, computer vision systems work well only under controlled conditions in limited domains. This book sets out to reproduce the robustness and speed of human perception by proposing a hierarchical neural network architecture for iterative image interpretation. The proposed architecture can be trained using unsupervised and supervised learning techniques. Applications of the proposed architecture are illustrated using small networks. Furthermore, several larger networks were trained to perform various nontrivial computer vision tasks.

9783540451693

10.1007/b11963 doi


Computer science.
Neurosciences.
Computer software.
Artificial intelligence.
Computer vision.
Optical pattern recognition.
Computer Science.
Computation by Abstract Devices.
Neurosciences.
Algorithm Analysis and Problem Complexity.
Artificial Intelligence (incl. Robotics).
Image Processing and Computer Vision.
Pattern Recognition.

QA75.5-76.95

004.0151
The Institute of Mathematical Sciences, Chennai, India

Powered by Koha