A connectionist model for corner detection in binary and gray images
- Resource Type
- Periodical
- Authors
- Basak, J.; Mahata, D.
- Source
- IEEE Transactions on Neural Networks IEEE Trans. Neural Netw. Neural Networks, IEEE Transactions on. 11(5):1124-1132 Sep, 2000
- Subject
- Computing and Processing
Communication, Networking and Broadcast Technologies
Detection algorithms
Image analysis
Object detection
Motion detection
Detectors
Pixel
Stability
Convergence
Image edge detection
Neural networks
- Language
- ISSN
- 1045-9227
1941-0093
For a given binary/gray image, each pixel in the image is assigned with some initial cornerity (our measurable quantity) which is a vector representing the direction and strength of the corner. These cornerities are then mapped onto a neural-network model which is essentially designed as a cooperative computational framework. The cornerity at each pixel is updated depending on the neighborhood information. After the network dynamics settles to stable state, the dominant points are obtained by finding out the local maxima in the cornerities. Theoretical investigations are made to ensure the stability and convergence of the network. It is found that the network is able to detect corner points: even in the noisy images and for open object boundaries. The dynamics of the network is extended to accept the edge information from gray images as well. The effectiveness of the model is experimentally demonstrated in synthetic and real-life binary and gray images.