HKUST Library Institutional Repository Banner

HKUST Institutional Repository >
Electronic and Computer Engineering  >
ECE Master Theses >

Please use this identifier to cite or link to this item: http://hdl.handle.net/1783.1/4288
Title: Attention detection based on cortical area V2 neurons
Authors: Yang, Yanning
Issue Date: 2008
Abstract: Detecting salient locations or reliable feature points in a visual scene has been a research subject for decades, both in computational neuroscience and classical computer vision. Because visual saliency is closely related to human perception, many models incorporate models from biological visual perception. In particular, since the response properties of neurons in the retina and primary visual cortex have been intensively studied and best understood, computational operations associated with these brain areas have been widely incorporated into saliency models. However, processing associated with higher cortical areas is only beginning to be incorporated, partly due to a lack of models and experimental results. We describe a salient point detection model that incorporates recent findings about the response properties of neurons in cortical area V2. It has been reported that certain V2 neurons encode combinations of orientations, with an apparent inclination to orthogonal pairs. The model introduced here integrates this finding as the last stage of a hierarchical architecture modeled after the visual processing in mammalian brains. Most parts of this model are based on current knowledge of neuroscience, and the seemingly simple operations like linear filtering can lead to fair resemblance to response properties of different neurons. We demonstrate that this model captures the intuitive notion of saliency, detects repeatable feature points under various image transformations and noisy conditions. We also introduce a binarization method and discuss the advantages of employing this method in our model.
Description: Thesis (M.Phil.)--Hong Kong University of Science and Technology, 2008
xiii, 14-75 leaves : ill. (some col.) ; 30 cm
HKUST Call Number: Thesis ECED 2008 Yang
URI: http://hdl.handle.net/1783.1/4288
Appears in Collections:ECE Master Theses

Files in This Item:

File Description SizeFormat
th_redirect.html0KbHTMLView/Open

All items in this Repository are protected by copyright, with all rights reserved.