Driven by deep learning and a large volume of data, scene text recognition has evolved rapidly in recent years. Formerly, RNN-attention-based methods have dominated this field, but suffer from the problem of attention drift in certain situations. Lately, semantic segmentation based algorithms have proven effective at recognizing text of different forms (horizontal, oriented and curved). However, these methods may produce spurious characters or miss genuine characters, as they rely heavily on a thresholding procedure operated on segmentation maps. To tackle these challenges, we propose in this paper an alternative approach, called TextScanner, for scene text recognition. TextScanner bears three characteristics: (1) Basically, it belongs to t...
We develop a Deep-Text Recurrent Network (DTRN)that regards scene text reading as a sequence labelli...
Abstract — Text characters and strings in natural scene can provide valuable information for many ap...
Dominant scene text recognition models commonly contain two building blocks, a visual model for feat...
Driven by deep learning and a large volume of data, scene text recognition has evolved rapidly in re...
Inspired by speech recognition, recent state-of-the-art algorithms mostly consider scene text recogn...
Optical Character Recognition (OCR) is a common method to convert typed, hand-written or printed tex...
In spite of significant research efforts, the existing scene text detection methods fall short of th...
International audienceUnderstanding text captured in real-world scenes is a challenging problem in t...
Scene text recognition has inspired great interests from the computer vision community in recent yea...
Abstract—Understanding text captured in real-world scenes is a challenging problem in the field of v...
Scene text recognition is the task of recognizing character sequences in images of natural scenes. T...
Leveraging the advances of natural language processing, most recent scene text recognizers adopt an ...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
The area of scene text recognition focuses on the problem of recognizing arbitrary text in images of...
Text detection and recognition in natural images have long been considered as two separate tasks tha...
We develop a Deep-Text Recurrent Network (DTRN)that regards scene text reading as a sequence labelli...
Abstract — Text characters and strings in natural scene can provide valuable information for many ap...
Dominant scene text recognition models commonly contain two building blocks, a visual model for feat...
Driven by deep learning and a large volume of data, scene text recognition has evolved rapidly in re...
Inspired by speech recognition, recent state-of-the-art algorithms mostly consider scene text recogn...
Optical Character Recognition (OCR) is a common method to convert typed, hand-written or printed tex...
In spite of significant research efforts, the existing scene text detection methods fall short of th...
International audienceUnderstanding text captured in real-world scenes is a challenging problem in t...
Scene text recognition has inspired great interests from the computer vision community in recent yea...
Abstract—Understanding text captured in real-world scenes is a challenging problem in the field of v...
Scene text recognition is the task of recognizing character sequences in images of natural scenes. T...
Leveraging the advances of natural language processing, most recent scene text recognizers adopt an ...
The real-life scene images exhibit a range of variations in text appearances, including complex shap...
The area of scene text recognition focuses on the problem of recognizing arbitrary text in images of...
Text detection and recognition in natural images have long been considered as two separate tasks tha...
We develop a Deep-Text Recurrent Network (DTRN)that regards scene text reading as a sequence labelli...
Abstract — Text characters and strings in natural scene can provide valuable information for many ap...
Dominant scene text recognition models commonly contain two building blocks, a visual model for feat...