Deep learning has revolutionized computer vision utilizing the increased availability of big data and the power of parallel computational units such as graphical processing units. The vast majority of deep learning research is conducted using images as training data, however the biomedical domain is rich in physiological signals that are used for diagnosis and prediction problems. It is still an open research question how to best utilize signals to train deep neural networks. In this paper we define the term Signal2Image (S2Is) as trainable or non-trainable prefix modules that convert signals, such as Electroencephalography (EEG), to image-like representations making them suitable for training image-based deep neural networks defined as `base models'. We compare the accuracy and time performance of four S2Is (`signal as image', spectrogram, one and two layer Convolutional Neural Networks (CNNs)) combined with a set of `base models' (LeNet, AlexNet, VGGnet, ResNet, DenseNet) along with the depth-wise and 1D variations of the latter. We also provide empirical evidence that the one layer CNN S2I performs better in eleven out of fifteen tested models than non-trainable S2Is for classifying EEG signals and we present visual comparisons of the outputs of the S2Is.
翻译:深层学习使计算机视野革命化,利用大数据的增加和图象处理器等平行计算单位的功率,使计算机视野革命化; 绝大多数深层学习研究是利用图像作为培训数据进行的,但生物医学领域具有丰富的生理信号,可用于诊断和预测问题; 仍然是一个开放的研究问题,如何最好地利用信号来训练深神经网络; 在本文件中,我们将信号2图像(S2IS)定义为一套“可训练或不可训练的前缀模块”,将电文学(EEEEEG)等信号转换为图像式的演示,使之适合于培训以图像为基础的深神经网络,将其定义为“基准模型”; 我们还比较了四个S2系统(`信号为图像'、光谱仪、1和2层动态神经网络(CNNs))的准确性和时间性,结合一套“基准模型”(LeNet、AlexNet、VGGnet、ResNet、DeneNet等),将信号转换成像像像样显示,使其适合于培训以图像为基础的深线网网络网络; 我们还提供了实证证据,表明,在S2S2SI对一层和15级的图像的比较中,我们无法对SIS进行第15级的图像分析。