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A New Parallel Detection-Recognition Approach for End-to-End Scene Text Extraction

机译:用于端到端场景文本提取的新并行检测识别方法

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In this work, we present a new conceptually simple and flexible network for accurate scene text extraction, which handle text detection and text recognition concurrently. Apart from solving feature sharing by designing a unified network, we implement end-to-end training of the whole system by a set of new optimization strategies. More importantly, this method highlights its novel parallel detection-recognition structure, which constructs a loose connection between both detection and recognition. This loose connection is embodied in the definition of overall loss and derivative back propagation for the model parameter updating, which automatically balances the contribution of the two branches to the system performance. It is different from the existing end-to-end methods where two subtasks are connected serially and thus yielding heavy dependence of the predecessor text detection task on the follow-up text recognition task and sensitivity of recognition to detection noise. In addition, a simple Mask-Rectifier mechanism is applied to easily adapt our system to incidental text recognition with arbitrary orientation and shape. Experiment results on Incidental Scene Text ICDAR2015 dataset surpass the current state-of-the-art FOTS method, as suggests the effectiveness of the proposed approach.
机译:在这项工作中,我们为准确的场景文本提取提供了一个新的概念简单灵活的网络,该网络同时处理文本检测和文本识别。除了通过设计统一网络来解决特征共享之外,我们通过一套新的优化策略来实现整个系统的端到端培训。更重要的是,该方法突出了其新的并联检测识别结构,其构建了检测和识别之间的松散连接。这种松动的连接体现在模型参数更新的整体损失和衍生回传递的定义中,它自动平衡两个分支对系统性能的贡献。它与现有的端到端方法不同,其中两个子任务串联连接,从而产生了前任文本检测任务对后续文本识别任务的重大依赖性以及对检测噪声的识别的敏感性。此外,应用简单的掩模整流器机制以容易地使我们的系统适应偶然的方向和形状的文本识别。实验结果偶然的场景文本ICDAR2015数据集超越了当前最先进的FOT方法,表明所提出的方法的有效性。

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