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Segmentation Methods for Image Classification Using a Convolutional Neural Network on AR-Sandbox

机译:利用AR-Sandbox上的卷积神经网络进行图像分类的分割方法

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Fields such as early education and motor rehabilitation provide a space for their integration with augmented reality devices as AR-Sandbox, in order to provide support to these fields, generating a feedback of tasks carried out through the recognition of images based on convolutional neural networks. However, the nature of the AR-Sandbox generates a high noise level of the acquired images, for this reason the present study has as purpose the implementation and comparison of three segmentation methods (Canny Edge Detector, Color-space and Threshold) for the training and prediction phase of a convolutional neural network model previously established. When carrying out this study, it was obtained that the combined model with color-space segmentation presents an average percentage of 99% performance for the classification of vowels, described by the AUC of the ROC curve, this being the model with the best performance.
机译:早期教育和运动康复等领域为它们与增强现实设备(如AR-Sandbox)集成提供了空间,以便为这些领域提供支持,生成对通过基于卷积神经网络的图像识别进行的任务的反馈。但是,AR沙盒的性质会导致所获取图像的噪声水平很高,因此,本研究的目的是对训练的三种分割方法(Canny Edge Detector,Color-space和Threshold)进行实施和比较。先前建立的卷积神经网络模型的预测阶段。进行这项研究时,发现具有色空间分割的组合模型对元音的分类表现出平均百分比为99%的性能,由ROC曲线的AUC表示,这是性能最佳的模型。

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