Fisher Kernels and Deep Learning were two developments with significant impact on large-scale object categorization in the last years. Both approaches were shown to achieve state-of-the-art results on large-scale object categorization datasets, such as ImageNet. Conceptually, however, they are perceived as very different and it is not uncommon for heated debates to spring up when advocates of both paradigms meet at conferences or workshops. In this work, we emphasize the similarities between both architectures rather than their differences and we argue that such a unified view allows us to transfer ideas from one domain to the other. As a concrete example we introduce a method for learning a support vector machine classifier with Fisher ker...
Fisher vector (FV) classifiers and Deep Neural Networks (DNNs) are popular and successful algorithms...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Learning models for detecting and classifying object categories is a challenging problem in machine ...
Fisher Kernels and Deep Learning were two develop-ments with significant impact on large-scale objec...
Although deep learning models have become the gold standard in achieving outstanding results on a la...
Within the field of pattern classification, the Fisher kernel is a powerful framework which combines...
As massively parallel computations have become broadly available with modern GPUs, deep architecture...
As massively parallel computations have become broadly available with modern GPUs, deep architecture...
International audienceThe Fisher kernel (FK) is a generic framework which combines the benefits of g...
Learning models for detecting and classifying object categories is a challenging problem in machine ...
Abstract. The Fisher kernel (FK) is a generic framework which com-bines the benefits of generative a...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Kernel Learning is widely used in pattern recognition and classification problems. We look at the be...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Fisher vector (FV) classifiers and Deep Neural Networks (DNNs) are popular and successful algorithms...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Learning models for detecting and classifying object categories is a challenging problem in machine ...
Fisher Kernels and Deep Learning were two develop-ments with significant impact on large-scale objec...
Although deep learning models have become the gold standard in achieving outstanding results on a la...
Within the field of pattern classification, the Fisher kernel is a powerful framework which combines...
As massively parallel computations have become broadly available with modern GPUs, deep architecture...
As massively parallel computations have become broadly available with modern GPUs, deep architecture...
International audienceThe Fisher kernel (FK) is a generic framework which combines the benefits of g...
Learning models for detecting and classifying object categories is a challenging problem in machine ...
Abstract. The Fisher kernel (FK) is a generic framework which com-bines the benefits of generative a...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Kernel Learning is widely used in pattern recognition and classification problems. We look at the be...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Fisher vector (FV) classifiers and Deep Neural Networks (DNNs) are popular and successful algorithms...
This paper presents the deep support vector machine (D-SVM) inspired by the increasing popularity of...
Learning models for detecting and classifying object categories is a challenging problem in machine ...