Leveraging the advances of natural language processing, most recent scene text recognizers adopt an encoder-decoder architecture where text images are first converted to representative features and then a sequence of characters via `sequential decoding'. However, scene text images suffer from rich noises of different sources such as complex background and geometric distortions which often confuse the decoder and lead to incorrect alignment of visual features at noisy decoding time steps. This paper presents I2C2W, a novel scene text recognition technique that is tolerant to geometric and photometric degradation by decomposing scene text recognition into two inter-connected tasks. The first task focuses on image-to-character (I2C) mapping wh...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
International audienceUnderstanding text captured in real-world scenes is a challenging problem in t...
Finding text in natural images has been a challenging task in vision. At the core of state-of-the-ar...
In this paper, we present a Character-Aware Neural Network (Char-Net) for recognizing distorted scen...
The area of scene text recognition focuses on the problem of recognizing arbitrary text in images of...
Inspired by speech recognition, recent state-of-the-art algorithms mostly consider scene text recogn...
We address the problem of image feature learning for scene text recognition. The image features in t...
Driven by deep learning and a large volume of data, scene text recognition has evolved rapidly in re...
Abstract—Recognizing text in images taken in the wild is a challenging problem that has received gre...
Dominant scene text recognition models commonly contain two building blocks, a visual model for feat...
Recent state-of-the-art scene text recognition methods are primarily based on Recurrent Neural Netwo...
This paper focuses on the problem of word detection and recognition in natural images. The problem i...
Scene Text Recognition (STR) is the problem of recognizing the correct word or character sequence in...
Abstract—Understanding text captured in real-world scenes is a challenging problem in the field of v...
Although an automated reader for the blind first appeared nearly two-hundred years ago, computers ca...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
International audienceUnderstanding text captured in real-world scenes is a challenging problem in t...
Finding text in natural images has been a challenging task in vision. At the core of state-of-the-ar...
In this paper, we present a Character-Aware Neural Network (Char-Net) for recognizing distorted scen...
The area of scene text recognition focuses on the problem of recognizing arbitrary text in images of...
Inspired by speech recognition, recent state-of-the-art algorithms mostly consider scene text recogn...
We address the problem of image feature learning for scene text recognition. The image features in t...
Driven by deep learning and a large volume of data, scene text recognition has evolved rapidly in re...
Abstract—Recognizing text in images taken in the wild is a challenging problem that has received gre...
Dominant scene text recognition models commonly contain two building blocks, a visual model for feat...
Recent state-of-the-art scene text recognition methods are primarily based on Recurrent Neural Netwo...
This paper focuses on the problem of word detection and recognition in natural images. The problem i...
Scene Text Recognition (STR) is the problem of recognizing the correct word or character sequence in...
Abstract—Understanding text captured in real-world scenes is a challenging problem in the field of v...
Although an automated reader for the blind first appeared nearly two-hundred years ago, computers ca...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
International audienceUnderstanding text captured in real-world scenes is a challenging problem in t...
Finding text in natural images has been a challenging task in vision. At the core of state-of-the-ar...