The structure tensor yields an excellent characterization of the local dimensionality and the corresponding orientation for simple neighborhoods, i.e. neighborhoods exhibiting a single orientation. We show that we can disentangle crossing structures if the tensor scale is much larger than the gradient scale. Mapping the gradient vectors to a continuous orientation representation yields a D(D+1)dimensional feature vector per pixel. Clustering of the vectors in this new space allows identification of multiple orientations. Each cluster of gradient vectors can be analyzed separately using the structure tensor approach. Proper clustering yields an unbiased estimate of the underlying orientations. 1
The tensor representation has proven a successful tool as a mean to describe local multi-dimensional...
Pattern clustering is an important data analysis process useful in a wide spectrum of computer visio...
We use a method to estimate local orientations in the n-dimensional space from the covariance matrix...
In this paper, we present new insights in methods to solve the orientation representation problem in...
Estimation of local orientation in images is often posed as the task of finding the minimum variance...
Abstract. A new crossing detector is presented which also permits orientation estimation of the unde...
We derive a new scale- and rotation-invariant feature for characterizing local neighbourhoods in ima...
Structure tensors are a common tool for orientation estimation in image processing and computer visi...
Automatic visual grading of seed lots with a high density of touching grain kernels is a challenging...
The fundamental problem of finding a suitable representation of the orientation of 3D surfaces is co...
Inspired by multi-scale and multi-orientation mechanisms recognized in the first stages of our visua...
Using the n-dimensional structure tensor, linear symmetries within local neighborhoods of multi-dime...
International audienceThis paper introduces a novel approach to estimate multiple orientations at ea...
Structure tensors are a common tool for orientation estimation in image processing and computer visi...
In this paper it is shown how estimates of local structure and orientation can be obtained using a s...
The tensor representation has proven a successful tool as a mean to describe local multi-dimensional...
Pattern clustering is an important data analysis process useful in a wide spectrum of computer visio...
We use a method to estimate local orientations in the n-dimensional space from the covariance matrix...
In this paper, we present new insights in methods to solve the orientation representation problem in...
Estimation of local orientation in images is often posed as the task of finding the minimum variance...
Abstract. A new crossing detector is presented which also permits orientation estimation of the unde...
We derive a new scale- and rotation-invariant feature for characterizing local neighbourhoods in ima...
Structure tensors are a common tool for orientation estimation in image processing and computer visi...
Automatic visual grading of seed lots with a high density of touching grain kernels is a challenging...
The fundamental problem of finding a suitable representation of the orientation of 3D surfaces is co...
Inspired by multi-scale and multi-orientation mechanisms recognized in the first stages of our visua...
Using the n-dimensional structure tensor, linear symmetries within local neighborhoods of multi-dime...
International audienceThis paper introduces a novel approach to estimate multiple orientations at ea...
Structure tensors are a common tool for orientation estimation in image processing and computer visi...
In this paper it is shown how estimates of local structure and orientation can be obtained using a s...
The tensor representation has proven a successful tool as a mean to describe local multi-dimensional...
Pattern clustering is an important data analysis process useful in a wide spectrum of computer visio...
We use a method to estimate local orientations in the n-dimensional space from the covariance matrix...