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Spoken Letter Recognition using Deep Convolutional Neural Networks on Sparse and Dissimilar Data

机译:使用深度卷积神经网络对稀疏和异常数据的说话信识别

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The applications of Machine Learning and Neural Networks (NN) are nearly unlimited and the application of artificial intelligence has gained much interest in recent years, because of their great performance in various tasks. Deep Convolutional Neural Networks (CNNs) are a state-of-the-art technique for visual recognition in image- and video data. However, the application range of a specific CNN is very limited, because the CNN is adapted for a specific task with an exclusive dataset for training. It needs to be rebuilt from scratch when the input- or output parameters are just slightly changing, including the collection of a new dataset for training. To reduce those cost and time expensive issues, transfer learning can be beneficial, where the outcome of an already pre-trained Neural Network, the source data, is fitted to the target dataset of a new task. In the case of object recognition, there are several use cases where pre-trained Deep CNNs are applied. But those Deep CNNs can not only be used for visual recognition. In this work the approach is made, to use transfer learning on DCNNs for spoken letter recognition, although the target data is very dissimilar from the source data, to show the range of application for transfer learning. Moreover, this application is trained with a very small dataset.
机译:机器学习和神经网络(NN)的应用几乎是无限的,近年来人工智能的应用已经很多兴趣,因为他们在各种任务中表现出色。深度卷积神经网络(CNNS)是用于在图像和视频数据中的视觉识别的最先进的技术。然而,特定CNN的应用范围非常有限,因为CNN适用于具有用于训练的独占数据集的特定任务。当输入或输出参数略微更改时,需要从划痕重建,包括用于培训的新数据集的集合。为了减少那些成本和时间昂贵的问题,转移学习可能是有益的,其中已经预先训练的神经网络,源数据的结果适用于新任务的目标数据集。在对象识别的情况下,存在若干使用情况,其中应用了预训练的深CNN。但那些深入的CNN不仅可以用于视觉识别。在这项工作中,该方法是在DCNN上使用转移学习,因为目标数据与源数据非常不一样,以显示转移学习的应用范围。此外,此应用程序受到非常小的数据集培训。

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