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Identification of Mongolian and Chinese Species in Natural Scenes Based on Convolutional Neural Network

机译:基于卷积神经网络的自然场景中蒙古和中国物种的识别

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Multilingual texts are very common in natural scenes. Dilterent languages have different shapes and structure. According to the language characteristics to choose the appropriate method can reduce the recognition error rate during text detection and recognition. This paper mainly proposes a lightweight convolutional neural network LTCNN for natural scene images mixed with Chinese characters and Mongolian. Firstly, collecting pictures contained both Chinese characters and Mongolian; then using perspective transformation to process the slanted text image, and using gamma transformation to enhance the image of underexposed or overexposed pictures;nest using the improved EAST model for the preprocessed pictures to extract text makes the data set needed for training the network; finally, the pictures in the data set are fed into the LTCNN network for training and identification of Mongolian and Chinese species. Experimental results show that the accuracy of Chinese and Mongolian recognition using this method can be close to 90% accuracy. Index Terms—language recognition,LTCNN,text correction.
机译:多语言文本在自然场景中很常见。稀释语言具有不同的形状和结构。根据语言特征来选择合适的方法可以减少文本检测和识别期间的识别错误率。本文主要提出了一种轻量级卷积神经网络LTCNN,用于与汉字和蒙古混合的自然场景图像。首先,收集图片包含汉字和蒙古族;然后使用透视变换来处理倾斜的文本图像,并使用伽玛变换来增强曝光或过度曝光的图像的图像;嵌套使用改进的东模型进行预处理的图片来提取文本使得培训网络所需的数据集;最后,数据集中的图片被馈送到LTCNN网络中,以进行蒙古和中国物种的培训和识别。实验结果表明,使用这种方法的中文和蒙古识别的准确性可接近90%的精度。索引项语言识别,LTCNN,文本校正。

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