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Papers/OrigamiNet: Weakly-Supervised, Segmentation-Free, One-Step...

OrigamiNet: Weakly-Supervised, Segmentation-Free, One-Step, Full Page Text Recognition by learning to unfold

Mohamed Yousef, Tom E. Bishop

2020-06-12CVPR 2020 6Handwriting RecognitionHandwritten Text RecognitionSegmentationHTRWeakly supervised segmentation
PaperPDFCodeCodeCode(official)CodeCodeCodeCodeCode

Abstract

Text recognition is a major computer vision task with a big set of associated challenges. One of those traditional challenges is the coupled nature of text recognition and segmentation. This problem has been progressively solved over the past decades, going from segmentation based recognition to segmentation free approaches, which proved more accurate and much cheaper to annotate data for. We take a step from segmentation-free single line recognition towards segmentation-free multi-line / full page recognition. We propose a novel and simple neural network module, termed \textbf{OrigamiNet}, that can augment any CTC-trained, fully convolutional single line text recognizer, to convert it into a multi-line version by providing the model with enough spatial capacity to be able to properly collapse a 2D input signal into 1D without losing information. Such modified networks can be trained using exactly their same simple original procedure, and using only \textbf{unsegmented} image and text pairs. We carry out a set of interpretability experiments that show that our trained models learn an accurate implicit line segmentation. We achieve state-of-the-art character error rate on both IAM \& ICDAR 2017 HTR benchmarks for handwriting recognition, surpassing all other methods in the literature. On IAM we even surpass single line methods that use accurate localization information during training. Our code is available online at \url{https://github.com/IntuitionMachines/OrigamiNet}.

Results

TaskDatasetMetricValueModel
Optical Character Recognition (OCR)IAM(line-level)Test CER6OrigamiNet-12
Optical Character Recognition (OCR)IAM(line-level)Test WER22.3OrigamiNet-12
Optical Character Recognition (OCR)LAM(line-level)Test CER3OrigamiNet-24
Optical Character Recognition (OCR)LAM(line-level)Test WER11OrigamiNet-24
Optical Character Recognition (OCR)LAM(line-level)Test CER3.1OrigamiNet-18
Optical Character Recognition (OCR)LAM(line-level)Test WER11.1OrigamiNet-18
Optical Character Recognition (OCR)LAM(line-level)Test CER3.1OrigamiNet-12
Optical Character Recognition (OCR)LAM(line-level)Test WER11.2OrigamiNet-12
Handwritten Text RecognitionIAM(line-level)Test CER6OrigamiNet-12
Handwritten Text RecognitionIAM(line-level)Test WER22.3OrigamiNet-12
Handwritten Text RecognitionLAM(line-level)Test CER3OrigamiNet-24
Handwritten Text RecognitionLAM(line-level)Test WER11OrigamiNet-24
Handwritten Text RecognitionLAM(line-level)Test CER3.1OrigamiNet-18
Handwritten Text RecognitionLAM(line-level)Test WER11.1OrigamiNet-18
Handwritten Text RecognitionLAM(line-level)Test CER3.1OrigamiNet-12
Handwritten Text RecognitionLAM(line-level)Test WER11.2OrigamiNet-12

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