Multi-modal approaches employ data from multiple input streams such as textual and visual domains. Deep neural networks have been successfully employed for these approaches. In this paper, we present a novel multi-modal approach that fuses images and text descriptions to improve multi-modal classification performance in real-world scenarios. The proposed approach embeds an encoded text onto an image to obtain an information enriched image. To learn feature representations of resulting images, standard Convolutional Neural Networks (CNNs) is employed for classification task. We demonstrate how a CNN based pipeline can be used to learn representations of the novel fusion approach. We compare our approach with individual sources on two large s...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
In this dissertation, the thesis that deep neural networks are suited for analysis of visual, textua...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
While the incipient internet was largely text-based, the modern digital world is becoming increasing...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
We propose a deep Multi-Modal Multi- Level Fusion Learning Framework used to categorize large-scale ...
INST: L_042We propose a deep Multi-Modal Multi- Level Fusion Learning Framework used to categorize l...
Conventional image categorization techniques primarily rely on low-level visual cues. In this paper,...
Current research in computer vision and machine learning has demonstrated some great abilities at de...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
In this dissertation, the thesis that deep neural networks are suited for analysis of visual, textua...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
Multi-modal approaches employ data from multiple input streams such as textual and visual domains. D...
While the incipient internet was largely text-based, the modern digital world is becoming increasing...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
When effectively used in deep learning models for classification, multi-modal data can provide rich ...
We propose a deep Multi-Modal Multi- Level Fusion Learning Framework used to categorize large-scale ...
INST: L_042We propose a deep Multi-Modal Multi- Level Fusion Learning Framework used to categorize l...
Conventional image categorization techniques primarily rely on low-level visual cues. In this paper,...
Current research in computer vision and machine learning has demonstrated some great abilities at de...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
Clinical applications, such as image-guided surgery and noninvasive diagnosis, rely heavily on multi...
In this dissertation, the thesis that deep neural networks are suited for analysis of visual, textua...