© 2020, Springer Science+Business Media, LLC, part of Springer Nature. The past several years have witnessed increasing research interest on covariance-based feature representation. Originally proposed as a region descriptor, it has now been used as a general representation in various recognition tasks, demonstrating promising performance. However, covariance matrix has some inherent shortcomings such as singularity in the case of small sample, limited capability in modeling complicated feature relationship, and a single, fixed form of representation. To achieve better recognition performance, this paper argues that more capable and flexible symmetric positive definite (SPD)-matrix-based representation shall be explored, and this is attempt...
Over the last two decades, the research community has witnessed extensive research growth in the fie...
International audienceSeveral descriptors have been proposed in the past for 3D shape analysis, yet ...
Abstract. We describe a new region descriptor and apply it to two problems, object detection and tex...
Covariance matrix has recently received increasing attention in computer vision by leveraging Rieman...
Covariance matrix has recently received increasing at-tention in computer vision by leveraging Riema...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
©2012 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
When analyzing high dimensional data sets, it is often necessary to implement feature extraction met...
When analyzing high dimensional data sets, it is often necessary to implement feature extraction met...
International audienceCharacterizing an image region by its feature inter-correlations is a modern t...
As a second-order pooled representation, covariance matrix has attracted much attention in visual re...
image window such as coordinate, color, gradient, edge, texture, motion, etc. as illustrated in Fig....
International audienceIn this paper, we propose a new 3D face recognition method based on covariance...
En aquesta tesi s’explora l’ús de descriptors basats en la covariància per tal de traslladar la obse...
International audienceThe use of spatial covariance matrix as a feature is investigated for motor im...
Over the last two decades, the research community has witnessed extensive research growth in the fie...
International audienceSeveral descriptors have been proposed in the past for 3D shape analysis, yet ...
Abstract. We describe a new region descriptor and apply it to two problems, object detection and tex...
Covariance matrix has recently received increasing attention in computer vision by leveraging Rieman...
Covariance matrix has recently received increasing at-tention in computer vision by leveraging Riema...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
©2012 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
When analyzing high dimensional data sets, it is often necessary to implement feature extraction met...
When analyzing high dimensional data sets, it is often necessary to implement feature extraction met...
International audienceCharacterizing an image region by its feature inter-correlations is a modern t...
As a second-order pooled representation, covariance matrix has attracted much attention in visual re...
image window such as coordinate, color, gradient, edge, texture, motion, etc. as illustrated in Fig....
International audienceIn this paper, we propose a new 3D face recognition method based on covariance...
En aquesta tesi s’explora l’ús de descriptors basats en la covariància per tal de traslladar la obse...
International audienceThe use of spatial covariance matrix as a feature is investigated for motor im...
Over the last two decades, the research community has witnessed extensive research growth in the fie...
International audienceSeveral descriptors have been proposed in the past for 3D shape analysis, yet ...
Abstract. We describe a new region descriptor and apply it to two problems, object detection and tex...