Labeling objects at a subordinate level typically requires expert knowledge, which is not always available when using random annotators. As such, learning directly from web images for fine-grained recognition has attracted broad attention. However, the presence of label noise and hard examples in web images are two obstacles for training robust fine-grained recognition models. To this end, in this paper, we propose a novel approach to remove irrelevant samples from real-world web images during training, while employing useful hard examples to update the network. Thus, our approach can alleviate the harmful effects of irrelevant noisy web images and hard examples to achieve better performance. Extensive experiments on three commonly used fin...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of dat...
Fine-grained classification is absorbed in recognizing the subordinate categories of one field, whic...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Labeling objects at the subordinate level typically requires expert knowledge, which is not always a...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of data...
Large-scale datasets have driven the rapid development of deep neural networks for visual recognitio...
© 1992-2012 IEEE. Leveraging the abundant number of web data is a promising strategy in addressing t...
Most current image categorization methods require large collections of man-ually annotated training ...
© 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...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of dat...
Fine-grained classification is absorbed in recognizing the subordinate categories of one field, whic...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...
Labeling objects at the subordinate level typically requires expert knowledge, which is not always a...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of data...
Large-scale datasets have driven the rapid development of deep neural networks for visual recognitio...
© 1992-2012 IEEE. Leveraging the abundant number of web data is a promising strategy in addressing t...
Most current image categorization methods require large collections of man-ually annotated training ...
© 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...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
Leveraging the abundant number of web data is a promising strategy in addressing the problem of dat...
Fine-grained classification is absorbed in recognizing the subordinate categories of one field, whic...
Deep networks thrive when trained on large scale data collections. This has given ImageNet a central...