In computer vision, objects such as local features, images and video sequences are often represented as high dimensional data points, although it is commonly believed that there are low dimensional geometrical structures that underline the data set. The low dimensional geometric information enables us to have a better understanding of the high dimensional data sets and is useful in solving computer vision problems. In this thesis, the geometrical structures are investigated from different perspectives according to different computer vision applications. For spectral clustering, the distribution of data points in the local region is summarised by a covariance matrix which is viewed as the Mahalanobis distance. For the action recognition pr...
This thesis presents data processing techniques for three different but related application areas: e...
Spatio-temporal patterns abound in the real world, and understanding them computationally holds the ...
3D object classification is one of the most popular topics in the field of computer vision and compu...
In computer vision, objects such as local features, images and video sequences are often represented...
Modern information processing relies on the axiom that high-dimensional data lie near low-dimensiona...
Recent advances in machine learning research promise to bring us closer to the original goals of art...
This manuscript is about a journey. The journey of computer vision and machine learning research fro...
Learning a non-linear function to embed the raw data (i.e., image, video, or language) to a discrimi...
In machine learning, the standard goal of is to find an appropriate statistical model from a model ...
Over the past few decades we have been experiencing a data explosion; massive amounts of data are in...
Can we detect low dimensional structure in high dimensional data sets of images and video? The probl...
We take a non-Euclidean view at three classical machine learning subjects: low-dimensional embedding...
Vast amounts of data are produced all the time. Yet this data does not easily equate to useful infor...
The thesis concerns a manifold-learning view on performing dimensionality reduction for applications...
This letter presents a clustering algorithm for high dimensional data that comes from a union of low...
This thesis presents data processing techniques for three different but related application areas: e...
Spatio-temporal patterns abound in the real world, and understanding them computationally holds the ...
3D object classification is one of the most popular topics in the field of computer vision and compu...
In computer vision, objects such as local features, images and video sequences are often represented...
Modern information processing relies on the axiom that high-dimensional data lie near low-dimensiona...
Recent advances in machine learning research promise to bring us closer to the original goals of art...
This manuscript is about a journey. The journey of computer vision and machine learning research fro...
Learning a non-linear function to embed the raw data (i.e., image, video, or language) to a discrimi...
In machine learning, the standard goal of is to find an appropriate statistical model from a model ...
Over the past few decades we have been experiencing a data explosion; massive amounts of data are in...
Can we detect low dimensional structure in high dimensional data sets of images and video? The probl...
We take a non-Euclidean view at three classical machine learning subjects: low-dimensional embedding...
Vast amounts of data are produced all the time. Yet this data does not easily equate to useful infor...
The thesis concerns a manifold-learning view on performing dimensionality reduction for applications...
This letter presents a clustering algorithm for high dimensional data that comes from a union of low...
This thesis presents data processing techniques for three different but related application areas: e...
Spatio-temporal patterns abound in the real world, and understanding them computationally holds the ...
3D object classification is one of the most popular topics in the field of computer vision and compu...