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A Noise-Resilient Super-Resolution Framework to Boost OCR Performance

机译:一种噪声弹性超分辨率框架,用于提高OCR性能

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Recognizing text from noisy low-resolution (LR) images is extremely challenging and is an open problem for the computer vision community. Super-resolving a noisy LR text image results in noisy High Resolution (HR) text image, as super-resolution (SR) leads to spatial correlation in the noise, and further cannot be de-noised successfully. Traditional noise-resilient text image super-resolution methods utilize a denoising algorithm prior to text SR but denoising process leads to loss of some high frequency details, and the output HR image has missing information (texture details and edges). This paper proposes a noise-resilient SR framework for text images and recognizes the text using a deep BLSTM network trained on high resolution images. The proposed end-to-end deep learning based framework for noise-resilient text image SR simultaneously perform image denoising and super-resolution as well as preserves missing details. Stacked sparse denoising auto-encoder (SSDA) is learned for LR text image denoising, and our proposed coupled deep convolutional auto-encoder (CDCA) is learned for text image super-resolution. The pretrained weights for both these networks serve as initial weights to the end-to-end framework during finetuning, and the network is jointly optimized for both the tasks. We tested on several Indian Language datasets and the OCR performance of the noise-resilient super-resolved images is at par with the original HR images.
机译:识别来自嘈杂的低分辨率(LR)图像的文本非常具有挑战性,并且是计算机视觉社区的开放问题。超级解析嘈杂的LR文本图像导致嘈杂的高分辨率(HR)文本图像,因为超分辨率(SR)导致噪声中的空间相关性,并且进一步不能成功发出。传统的噪声弹性文本图像超分辨率方法在文本SR之前利用去噪算法,但去噪过程导致一些高频细节丢失,输出HR图像缺少信息(纹理细节和边缘)。本文提出了一种用于文本图像的噪声弹性SR框架,并使用在高分辨率图像上培训的深蓝色布斯特网络识别文本。所提出的噪声弹性文本图像SR的端到端深度学习框架同时执行图像去噪和超分辨率以及保留缺少的细节。为LR文本图像去噪了解的堆叠稀疏的自动编码器(SSDA),我们提出的耦合耦合的深卷积自动编码器(CDCA)是为了文本图像超分辨率。这两个网络的预制权重用于FineTuning期间的端到端框架的初始权重,并且网络是针对任务共同优化的。我们在几个印度语言数据集中测试,噪声弹性超级分辨图像的OCR性能与原始HR图像相提并论。

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