Image representation is a challenging task. In particular, in order to obtain better performances in different image processing applications such as video surveillance, autonomous driving, crime scene detection and automatic inspection, effective and efficient image representation is a fundamental need. The performance of these applications usually depends on how accurately images are classified into their corresponding groups or how precisely relevant images are retrieved from a database based on a query. Accuracy in image classification and precision in image retrieval depend on the effectiveness of image representation. Existing image representation methods have some limitations. For example, spatial pyramid matching, which is a popular ...
Recent research has shown the initial success of sparse coding (Sc) in solving many computer vision ...
Kernel classifiers based on the hand-crafted image descriptors proposed in the literature have achie...
Visual Recognition Challange workshop, in conjunction with ICCVInternational audienceThis talk discu...
Kernel descriptors have been proven to outperform existing histogram based local descriptors as such...
Content-based image retrieval (CBIR) is a popular approach to retrieve images based on a query. In C...
Tamura features are based on human visual perception and have huge potential in image representation...
This paper proposes a new approach for image classification by combining pyramid match kernel (PMK) ...
Image representation using feature descriptors is crucial. A number of histogram-based descriptors a...
Computer vision researchers have developed various learning methods based on the bag of words model ...
International audienceMost image encodings achieve orientation invariance by aligning the patches to...
The popular bag-of-features representation for object recognition collects signatures of local image...
Kernel descriptors [1] provide a unified way to generate rich visual feature sets by turning pixel a...
Automatic understanding of visual information is one of the main requirements for a complete artific...
Discriminative learning is challenging when examples are sets of features, and the sets vary in card...
Abstract—In this paper we present a novel method to improve the flexibility of descriptor matching f...
Recent research has shown the initial success of sparse coding (Sc) in solving many computer vision ...
Kernel classifiers based on the hand-crafted image descriptors proposed in the literature have achie...
Visual Recognition Challange workshop, in conjunction with ICCVInternational audienceThis talk discu...
Kernel descriptors have been proven to outperform existing histogram based local descriptors as such...
Content-based image retrieval (CBIR) is a popular approach to retrieve images based on a query. In C...
Tamura features are based on human visual perception and have huge potential in image representation...
This paper proposes a new approach for image classification by combining pyramid match kernel (PMK) ...
Image representation using feature descriptors is crucial. A number of histogram-based descriptors a...
Computer vision researchers have developed various learning methods based on the bag of words model ...
International audienceMost image encodings achieve orientation invariance by aligning the patches to...
The popular bag-of-features representation for object recognition collects signatures of local image...
Kernel descriptors [1] provide a unified way to generate rich visual feature sets by turning pixel a...
Automatic understanding of visual information is one of the main requirements for a complete artific...
Discriminative learning is challenging when examples are sets of features, and the sets vary in card...
Abstract—In this paper we present a novel method to improve the flexibility of descriptor matching f...
Recent research has shown the initial success of sparse coding (Sc) in solving many computer vision ...
Kernel classifiers based on the hand-crafted image descriptors proposed in the literature have achie...
Visual Recognition Challange workshop, in conjunction with ICCVInternational audienceThis talk discu...