This paper introduces a new few-shot learning pipeline that casts relevance ranking for image retrieval as binary ranking relation classification. In comparison to image classification, ranking relation classification is sample efficient and domain agnostic. Besides, it provides a new perspective on few-shot learning and is complementary to state-of-the-art methods. The core component of our deep neural network is a simple MLP, which takes as input an image triplet encoded as the difference between two vector-Kronecker products, and outputs a binary relevance ranking order. The proposed RankMLP can be built on top of any state-of-the-art feature extractors, and our entire deep neural network is called the ranking deep neural network, or Ran...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
Learning a similarity function between pairs of objects is at the core of learning to rank approache...
In this paper an object-based image ranking is performed using both supervised and unsupervised neur...
This paper introduces a new few-shot learning pipeline that casts relevance ranking for image retrie...
The problem of relevance ranking consists of sorting a set of objects with respect to a given criter...
Image retrieval refers to finding relevant images from an image database for a query, which is consi...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
Due to the growing amount of available information, learning to rank has become an important researc...
We present a conceptually simple, flexible, and general framework for few-shot learning, where a cla...
Recently, various learning to rank approaches have been proposed in the information retrieval realm,...
Conventional image classification methods usually require a large number of training samples for the...
Traditional deep learning-based image classification methods often fail to recognize a new class tha...
Learning fine-grained image similarity is a challenging task. It needs to capture between-class and ...
Multilabel ranking is an important machine learning task with many applications, such as content-bas...
This work targets image retrieval task hold by MSR-Bing Grand Challenge. Image retrieval is consider...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
Learning a similarity function between pairs of objects is at the core of learning to rank approache...
In this paper an object-based image ranking is performed using both supervised and unsupervised neur...
This paper introduces a new few-shot learning pipeline that casts relevance ranking for image retrie...
The problem of relevance ranking consists of sorting a set of objects with respect to a given criter...
Image retrieval refers to finding relevant images from an image database for a query, which is consi...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
Due to the growing amount of available information, learning to rank has become an important researc...
We present a conceptually simple, flexible, and general framework for few-shot learning, where a cla...
Recently, various learning to rank approaches have been proposed in the information retrieval realm,...
Conventional image classification methods usually require a large number of training samples for the...
Traditional deep learning-based image classification methods often fail to recognize a new class tha...
Learning fine-grained image similarity is a challenging task. It needs to capture between-class and ...
Multilabel ranking is an important machine learning task with many applications, such as content-bas...
This work targets image retrieval task hold by MSR-Bing Grand Challenge. Image retrieval is consider...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
Learning a similarity function between pairs of objects is at the core of learning to rank approache...
In this paper an object-based image ranking is performed using both supervised and unsupervised neur...