A statistical correlation technique (SCT) and two variants of a neural network are presented to solve the motion correspondence problem. Solutions of the motion correspondence problem aim to maintain the identities of individuated elements as they move. In a preprocessing stage, two snapshots of a moving scene are convoluted with two-dimensional Gabor functions, which yields orientations and spatial frequencies of the snapshots at every position. In this paper these properties are used to extract, respectively, the attributes orientation, size and position of line segments. The SCT uses cross-correlations to find the correct translation components, angle of rotation and scaling factor. These parameters are then used in combination with the ...
The main goal of this work is to demonstrate the feasibility and potential of recovering motion from...
The ability to record from increasingly large numbers of neurons, and the increasing attention being...
This paper demonstrates how unsupervised learning based on Hebb-like mechanisms is sufficient for tr...
A statistical correlation technique (SCT) and two variants of a neural network are presented to solv...
Finding trajectories of moving objects in a monocular image sequence is a vital technique in the fie...
We review [4] a new method of performing Canonical Correlation Analysis with Artificial Neural Netw...
A nonlinear correlation algorithm is proposed for estimating the motion of objects from an image pai...
Reichardt W, Schlögel RW, Egelhaaf M. Movement detectors of the correlation type provide sufficient ...
Visual correspondence problem (matching), %including stereo matching and motion matching, is an majo...
© 1996 IEEE. A nonlinear correlation algorithm is presented for estimating the motion of objects fro...
This work aims at defining an extension of a competitive method for matching correspondences in ster...
The world is an ever-changing place. To make sense of it, the brain must be able to process a consta...
This thesis investigates the correlation of Hermite functions in the form of a Hermite neural networ...
The ability to record from increasingly large numbers of neurons, and the increasing attention being...
AbstractÐThis paper studies the motion correspondence problem for which a diversity of qualitative a...
The main goal of this work is to demonstrate the feasibility and potential of recovering motion from...
The ability to record from increasingly large numbers of neurons, and the increasing attention being...
This paper demonstrates how unsupervised learning based on Hebb-like mechanisms is sufficient for tr...
A statistical correlation technique (SCT) and two variants of a neural network are presented to solv...
Finding trajectories of moving objects in a monocular image sequence is a vital technique in the fie...
We review [4] a new method of performing Canonical Correlation Analysis with Artificial Neural Netw...
A nonlinear correlation algorithm is proposed for estimating the motion of objects from an image pai...
Reichardt W, Schlögel RW, Egelhaaf M. Movement detectors of the correlation type provide sufficient ...
Visual correspondence problem (matching), %including stereo matching and motion matching, is an majo...
© 1996 IEEE. A nonlinear correlation algorithm is presented for estimating the motion of objects fro...
This work aims at defining an extension of a competitive method for matching correspondences in ster...
The world is an ever-changing place. To make sense of it, the brain must be able to process a consta...
This thesis investigates the correlation of Hermite functions in the form of a Hermite neural networ...
The ability to record from increasingly large numbers of neurons, and the increasing attention being...
AbstractÐThis paper studies the motion correspondence problem for which a diversity of qualitative a...
The main goal of this work is to demonstrate the feasibility and potential of recovering motion from...
The ability to record from increasingly large numbers of neurons, and the increasing attention being...
This paper demonstrates how unsupervised learning based on Hebb-like mechanisms is sufficient for tr...