Most current image categorization methods require large collections of man-ually annotated training examples to learn accurate visual recognition models. The time-consuming human labeling effort effectively limits these approaches to recognition problems involving a small number of different object classes. In or-der to address this shortcoming, in recent years several authors have proposed to learn object classifiers from weakly-labeled Internet images, such as photos re-trieved by keyword-based image search engines. While this strategy eliminates the need for human supervision, the recognition accuracies of these methods are considerably lower than those obtained with fully-supervised approaches, because of the noisy nature of the labels ...
In many visual recognition tasks, the domain distribution mismatch between the training set (i.e., s...
© 2017 IEEE. Labeled image datasets have played a critical role in high-level image understanding. H...
Abstract. In this paper we report the contribution of XRCE team to the Domain Adaptation Challenge [...
© 1979-2012 IEEE. Learning visual representations from web data has recently attracted attention for...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Labeling objects at a subordinate level typically requires expert knowledge, which is not always ava...
The Internet has become the largest repository for numerous resources, a big portion of which are i...
Large-scale datasets have driven the rapid development of deep neural networks for visual recognitio...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of data...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
In many visual recognition tasks, the domain distribution mismatch between the training set (i.e., s...
© 2017 IEEE. Labeled image datasets have played a critical role in high-level image understanding. H...
Abstract. In this paper we report the contribution of XRCE team to the Domain Adaptation Challenge [...
© 1979-2012 IEEE. Learning visual representations from web data has recently attracted attention for...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Labeling objects at a subordinate level typically requires expert knowledge, which is not always ava...
The Internet has become the largest repository for numerous resources, a big portion of which are i...
Large-scale datasets have driven the rapid development of deep neural networks for visual recognitio...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of data...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
We address the visual categorization problem and present a method that utilizes weakly labeled data ...
In many visual recognition tasks, the domain distribution mismatch between the training set (i.e., s...
© 2017 IEEE. Labeled image datasets have played a critical role in high-level image understanding. H...
Abstract. In this paper we report the contribution of XRCE team to the Domain Adaptation Challenge [...