AbstractFocusing on the problem of localized content-based image retrieval, based on probabilistic latent semantic analysis (PLSA) and transductive support vector machine (TSVM), a novel semi-supervised multi-instance learning (SSMIL) algorithm is proposed, where a bag corresponds to an image and an instance corresponds to the low-level visual features of a segmented region. In order to convert an MIL problem into a standard supervised learning problem, first, all the instances in training bags be clustered by K-Means method, and regards each cluster center as “visual-word” to build a visual vocabulary. Second, according to the distance between “visual-word” and instance, a fuzzy membership function is defined to establish a fuzzy term-docu...
In multi-instance learning, the training examples are bags composed of instances without labels and ...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
In previous work, we developed a novel Relevance Feedback (RF) framework that learns One-class Suppo...
Multiple Instance Learning (MIL) is a special kind of supervised learning problem that has been stud...
Relevance Feedback (RF) is a widely used technique in incorporating user’s knowledge with the learni...
Automatic content-based image categorization is a challenging research topic and has many practical ...
In this study, we propose a weakly-supervised multiple instance learning (MIL) method to improve the...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Relevant and irrelevant images collected from the We-b (e.g., Flickr.com) have been employed as loos...
ABSTRACT Classic Content-Based Image Retrieval (CBIR) takes as input a single query image provided b...
The ability to search through images based on their content rather than on their low-level features ...
Part 7: MultimediaInternational audienceBecause multi-instance and multi-label learning can effectiv...
We propose to combine short-term block-based fuzzy support vector machine (FSVM) learn-ing and long-...
Abstract—To deal with the two problems in image retrieval, i.e., the small number of query images, t...
In multi-instance learning, the training examples are bags composed of instances without labels and ...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
In previous work, we developed a novel Relevance Feedback (RF) framework that learns One-class Suppo...
Multiple Instance Learning (MIL) is a special kind of supervised learning problem that has been stud...
Relevance Feedback (RF) is a widely used technique in incorporating user’s knowledge with the learni...
Automatic content-based image categorization is a challenging research topic and has many practical ...
In this study, we propose a weakly-supervised multiple instance learning (MIL) method to improve the...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Relevant and irrelevant images collected from the We-b (e.g., Flickr.com) have been employed as loos...
ABSTRACT Classic Content-Based Image Retrieval (CBIR) takes as input a single query image provided b...
The ability to search through images based on their content rather than on their low-level features ...
Part 7: MultimediaInternational audienceBecause multi-instance and multi-label learning can effectiv...
We propose to combine short-term block-based fuzzy support vector machine (FSVM) learn-ing and long-...
Abstract—To deal with the two problems in image retrieval, i.e., the small number of query images, t...
In multi-instance learning, the training examples are bags composed of instances without labels and ...
In recent years, the Multiple-Instance Learning (MIL) problem is becoming more and more popular in t...
In previous work, we developed a novel Relevance Feedback (RF) framework that learns One-class Suppo...