In this paper, we focus on the problem of unsupervised image-sentence matching. Existing research explores to utilize document-level structural information to sample positive and negative instances for model training. Although the approach achieves positive results, it introduces a sampling bias and fails to distinguish instances with high semantic similarity. To alleviate the bias, we propose a new sampling strategy to select additional intra-document image-sentence pairs as positive or negative samples. Furthermore, to recognize the complex pattern in intra-document samples, we propose a Transformer based model to capture fine-grained features and implicitly construct a graph for each document, where concepts in a document are introduced ...
In this thesis, we propose a different technique to initialize a Convolutional K-means. We propose V...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
This paper presents a novel framework for discriminatively training spoken document similarity model...
This paper presents a novel approach for automatically generating image descriptions: visual detecto...
© 2019 Association for Computing Machinery. Performing direct matching among different modalities (l...
Although image and sentence matching has been widely studied, its intrinsic few-shot problem is comm...
This paper presents a novel approach for automatically generating image descriptions: visual detecto...
Unsupervised sentence representation learning is a fundamental problem in natural language processin...
In this paper, we focus on a new practical task, document-scale text content manipulation, which is ...
The current state-of-the-art, in terms of performance, for solving document image binarization is tr...
Unsupervised image captioning is a challenging task that aims at generating captions without the sup...
We introduce a model for bidirectional retrieval of images and sentences through a multi-modal embed...
Matching two texts is a fundamental problem in many natural language processing tasks. An effective ...
Image generation from text is the task of generating new images from a textual unit such as word, ph...
We build a joint multimodal model of text and images for automatically assigning illustrative images...
In this thesis, we propose a different technique to initialize a Convolutional K-means. We propose V...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
This paper presents a novel framework for discriminatively training spoken document similarity model...
This paper presents a novel approach for automatically generating image descriptions: visual detecto...
© 2019 Association for Computing Machinery. Performing direct matching among different modalities (l...
Although image and sentence matching has been widely studied, its intrinsic few-shot problem is comm...
This paper presents a novel approach for automatically generating image descriptions: visual detecto...
Unsupervised sentence representation learning is a fundamental problem in natural language processin...
In this paper, we focus on a new practical task, document-scale text content manipulation, which is ...
The current state-of-the-art, in terms of performance, for solving document image binarization is tr...
Unsupervised image captioning is a challenging task that aims at generating captions without the sup...
We introduce a model for bidirectional retrieval of images and sentences through a multi-modal embed...
Matching two texts is a fundamental problem in many natural language processing tasks. An effective ...
Image generation from text is the task of generating new images from a textual unit such as word, ph...
We build a joint multimodal model of text and images for automatically assigning illustrative images...
In this thesis, we propose a different technique to initialize a Convolutional K-means. We propose V...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
This paper presents a novel framework for discriminatively training spoken document similarity model...