Leveraging the characteristics of convolutional layers, neural networks are extremely effective for pattern recognition tasks. However in some cases, their decisions are based on unintended information leading to high performance on standard benchmarks but also to a lack of generalization to challenging testing conditions and unintuitive failures. Recent work has termed this "shortcut learning" and addressed its presence in multiple domains. In text recognition, we reveal another such shortcut, whereby recognizers overly depend on local image statistics. Motivated by this, we suggest an approach to regulate the reliance on local statistics that improves text recognition performance. Our method, termed TextAdaIN, creates local distortions ...
Abstract. Maximally Stable Extremal Regions (MSERs) have achieved great success in scene text detect...
In image scene, text contains high-level of important information that helps to analyze and consider...
Text understanding in scene images has gained plenty of attention in the computer vision community a...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
Recent progress in deep learning has led to the development of Optical Character Recognition (OCR) s...
Text classification is a fundamental Natural Language Processing task that has a wide variety of app...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
Two problems that burden the learning process of Artificial Neural Networks with Back Propagation ar...
In the scene text detection field, recent deep neural network-based approaches have garnered signifi...
State-of-the-art text classification models are becoming increasingly reliant on deep neural network...
In this article, we propose using deep learning and transformer architectures combined with classica...
Convolutional neural networks have seen much success in computer vision and natural language process...
We address the problem of image feature learning for scene text recognition. The image features in t...
Convolutional neural networks have seen much success in computer vision and natural language process...
Neural network architectures in natural language processing often use attention mechanisms to produc...
Abstract. Maximally Stable Extremal Regions (MSERs) have achieved great success in scene text detect...
In image scene, text contains high-level of important information that helps to analyze and consider...
Text understanding in scene images has gained plenty of attention in the computer vision community a...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
Recent progress in deep learning has led to the development of Optical Character Recognition (OCR) s...
Text classification is a fundamental Natural Language Processing task that has a wide variety of app...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
Two problems that burden the learning process of Artificial Neural Networks with Back Propagation ar...
In the scene text detection field, recent deep neural network-based approaches have garnered signifi...
State-of-the-art text classification models are becoming increasingly reliant on deep neural network...
In this article, we propose using deep learning and transformer architectures combined with classica...
Convolutional neural networks have seen much success in computer vision and natural language process...
We address the problem of image feature learning for scene text recognition. The image features in t...
Convolutional neural networks have seen much success in computer vision and natural language process...
Neural network architectures in natural language processing often use attention mechanisms to produc...
Abstract. Maximally Stable Extremal Regions (MSERs) have achieved great success in scene text detect...
In image scene, text contains high-level of important information that helps to analyze and consider...
Text understanding in scene images has gained plenty of attention in the computer vision community a...