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A Fast and Accurate Object Detector for Handwritten Digit String Recognition

机译:用于手写数字字符串识别的快速准确的对象探测器

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Focusing on handwritten digit string recognition (HDSR), we propose an anchor-free object detector called ChipNet, where a novel encoding method is designed. The input image is divided into columns, and then these columns are encoded by the ground truth. The adjacent columns are responsible for detecting the same target so that it can well address the class-imbalanced problem meanwhile reducing the network computation. ChipNet is composed of convolutional and bidirectional long short term memory networks. Different from the typical detectors, it doesn't use region proposals, anchors or regions of interest pooling. Hence, it can overcome the shortages of anchor-based and dense detectors in HDSR. The experiments are implemented on the synthetic digit strings, the CVL HDS database, and the ORAND-CAR-A & B databases. The high accuracies, which surpass the reported results by a large margin (up to 6.62%), are achieved. Furthermore, it gets 219 FPS speed on 160 × 32 px resolution images when using a Tesla P100 GPU. The results also show that ChipNet can handle touching, connecting and arbitrary length digit strings, and the obtained accuracies in HDSR are as high as the ones in single handwritten digit recognition.
机译:专注于手写数字字符串识别(HDSR),我们提出了一个名为ChipNet的无锚对象探测器,其中设计了一种新颖的编码方法。输入图像被分成列,然后通过地面真理编码这些列。相邻列负责检测相同的目标,使得它可以很好地解决类别 - 不平衡的问题,同时降低网络计算。 ChipNet由卷积和双向长期内存网络组成。与典型的探测器不同,它不使用区域建议,锚或娱乐区域。因此,它可以克服HDSR中基于锚和致密探测器的短缺。实验在合成数字字符串,CVL HDS数据库和Orand-Car-A&B数据库上实现。达到高精度,达到据报道的较大的余量(高达6.62%)。此外,在使用TESLA P100 GPU时,它可以在160×32 PX分辨率图像上获得219个FPS速度。结果还表明,ChipNet可以处理触摸,连接和任意长度的数字字符串,并且HDSR中获得的精度高于单个手写数字识别中的高精度。

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