Image Retrieval is commonly evaluated with Average Precision (AP) or Recall@k. Yet, those metrics, are limited to binary labels and do not take into account errors' severity. This paper introduces a new hierarchical AP training method for pertinent image retrieval (HAP-PIER). HAPPIER is based on a new H-AP metric, which leverages a concept hierarchy to refine AP by integrating errors' importance and better evaluate rankings. To train deep models with H-AP, we carefully study the problem's structure and design a smooth lower bound surrogate combined with a clustering loss that ensures consistent ordering. Extensive experiments on 6 datasets show that HAPPIER significantly outperforms state-of-the-art methods for hierarchical retrieval, while...
Learning to Rank is the application of Machine Learning in order to create and optimize ranking func...
Recent advances on fine-grained image retrieval prefer learning convolutional neural network (CNN) w...
The limited availability of ground truth relevance labels has been a major impediment to the applica...
Optimising a ranking-based metric, such as Average Precision (AP), is notoriously challenging due to...
International audienceThe problem of ranking a set of visual samples according to their relevance to...
Optimizing the approximation of Average Precision (AP) has been widely studied for image retrieval. ...
Qin D., Chen Y., Guillaumin M., Van Gool L., ''Learning to rank bag-of-word histograms for large-sca...
Most state-of-the-art object retrieval systems rely on ad-hoc similarities between his-tograms of qu...
Hit lists are at the core of retrieval systems. The top ranks are important, especially if user feed...
The ranking method is a key element of Content-based Image Retrieval (CBIR) system, which can affect...
International audienceIn image retrieval, standard evaluation metrics rely on score ranking, e.g. av...
Margin-maximizing techniques such as boosting have been generating excitement in machine learning ci...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
An image search reranking (ISR) technique aims at refining text-based search results by mining image...
Most classification models treat all misclassifications equally. However, different classes may be r...
Learning to Rank is the application of Machine Learning in order to create and optimize ranking func...
Recent advances on fine-grained image retrieval prefer learning convolutional neural network (CNN) w...
The limited availability of ground truth relevance labels has been a major impediment to the applica...
Optimising a ranking-based metric, such as Average Precision (AP), is notoriously challenging due to...
International audienceThe problem of ranking a set of visual samples according to their relevance to...
Optimizing the approximation of Average Precision (AP) has been widely studied for image retrieval. ...
Qin D., Chen Y., Guillaumin M., Van Gool L., ''Learning to rank bag-of-word histograms for large-sca...
Most state-of-the-art object retrieval systems rely on ad-hoc similarities between his-tograms of qu...
Hit lists are at the core of retrieval systems. The top ranks are important, especially if user feed...
The ranking method is a key element of Content-based Image Retrieval (CBIR) system, which can affect...
International audienceIn image retrieval, standard evaluation metrics rely on score ranking, e.g. av...
Margin-maximizing techniques such as boosting have been generating excitement in machine learning ci...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
An image search reranking (ISR) technique aims at refining text-based search results by mining image...
Most classification models treat all misclassifications equally. However, different classes may be r...
Learning to Rank is the application of Machine Learning in order to create and optimize ranking func...
Recent advances on fine-grained image retrieval prefer learning convolutional neural network (CNN) w...
The limited availability of ground truth relevance labels has been a major impediment to the applica...