论文标题

基于相似性学习基于ECG时间序列分类的少数射击学习

Similarity Learning based Few Shot Learning for ECG Time Series Classification

论文作者

Gupta, Priyanka, Bhaskarpandit, Sathvik, Gupta, Manik

论文摘要

使用深度学习模型对从物联网(IoT)设备生成的时间序列数据进行分类,需要大量的标记数据。但是,由于物联网设备中可用的资源限制,通常很难使用大型数据集进行培训。本文提出并证明了使用暹罗卷积神经网络对心电图心律失常分类的基于相似性学习的相似性射击学习。很少有射击学习可以通过从很少的标记示例中识别出新颖的课程来解决数据稀缺问题。很少有射击学习首先依赖于相关数据库中的模型进行预处理,然后将学习用于进一步适应每个课程的示例很少。我们的实验评估了相对于K(每类实例数)进行ECG时间序列数据分类的性能准确性。 The accuracy with 5- shot learning is 92.25% which marginally improves with further increase in K. We also compare the performance of our method against other well-established similarity learning techniques such as Dynamic Time Warping (DTW), Euclidean Distance (ED), and a deep learning model - Long Short Term Memory Fully Convolutional Network (LSTM-FCN) with the same amount of data and conclude that our method outperforms them for a limited dataset size.对于K = 5,对于ED,DTW,LSTM-FCN和SCNN,获得的精度分别为57%,54%,33%和92%。

Using deep learning models to classify time series data generated from the Internet of Things (IoT) devices requires a large amount of labeled data. However, due to constrained resources available in IoT devices, it is often difficult to accommodate training using large data sets. This paper proposes and demonstrates a Similarity Learning-based Few Shot Learning for ECG arrhythmia classification using Siamese Convolutional Neural Networks. Few shot learning resolves the data scarcity issue by identifying novel classes from very few labeled examples. Few Shot Learning relies first on pretraining the model on a related relatively large database, and then the learning is used for further adaptation towards few examples available per class. Our experiments evaluate the performance accuracy with respect to K (number of instances per class) for ECG time series data classification. The accuracy with 5- shot learning is 92.25% which marginally improves with further increase in K. We also compare the performance of our method against other well-established similarity learning techniques such as Dynamic Time Warping (DTW), Euclidean Distance (ED), and a deep learning model - Long Short Term Memory Fully Convolutional Network (LSTM-FCN) with the same amount of data and conclude that our method outperforms them for a limited dataset size. For K=5, the accuracies obtained are 57%, 54%, 33%, and 92% approximately for ED, DTW, LSTM-FCN, and SCNN, respectively.

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