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Preprocessing-free surface material classification using convolutional neural networks pretrained by sparse Autoencoder

机译:使用稀疏AutoEncoder覆盖的卷积神经网络的预处理表面材料分类

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Acceleration signals captured during the interaction of a rigid tool with an object surface carry relevant information for surface material classification. Existing methods mostly rely on carefully designed perception-related features or features adapted from audio processing motivated by the observed similarity between acceleration signals and audio signals. In contrast, our proposed method automatically learns features from RAW acceleration data without preprocessing. The approach is based on Convolutional Neural Networks (CNN) trained and tested on RAW data. For better performance and faster convergence of the CNN, we use the weights of a trained sparse Autoencoder (AE) to initialize the weights of the first convolution layers of the CNN. This strategy is named CNN pretrained by sparse AE (ACNN). Our classification results on a publically available Haptic Texture Database demonstrate that the proposed algorithm performs favorably against existing methods.
机译:在具有物体表面的刚性工具的相互作用期间捕获的加速信号携带用于表面材料分类的相关信息。现有方法主要依赖于仔细设计的感知相关的特征或特征,该特征或特征适用于由加速度信号和音频信号之间观察到的相似性的音频处理。相比之下,我们的建议方法在没有预处理的情况下自动从原始加速数据中学习功能。该方法基于训练和测试原始数据的卷积神经网络(CNN)。为了更好的性能和CNN的更快融合,我们使用训练有素的稀疏自动码器(AE)的权重初始化CNN的第一卷积层的权重。该策略被命名为CNN,由稀疏AE(ACNN)预先磨损。我们在公共可用的触觉纹理数据库上的分类结果表明,所提出的算法对现有方法有利地执行。

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