基于知识精馏的多流癫痫分类方法

Jen-Cheng Hou, A. McGonigal, F. Bartolomei, M. Thonnat
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引用次数: 2

摘要

在这项工作中,我们提出了一种知识蒸馏的多流方法来分类癫痫发作和心因性非癫痫发作。该框架利用来自关键点的多流信息和来自身体和面部的外观信息。我们将检测到的关键点作为时空图,并使用自适应图卷积网络对其进行训练,以模拟整个癫痫发作事件的时空动态。此外,通过引入知识蒸馏机制,利用外观流中的互补信息对关键点特征进行正则化。我们通过对真实世界的癫痫视频进行实验来证明我们方法的有效性。同时进行了抓控交叉验证和留一被试验证,模型的F1-scorelaccuracy在抓控交叉验证时为0.89/0.87,在留一被试验证时为0.75/0.72。
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A Multi-Stream Approach for Seizure Classification with Knowledge Distillation
In this work, we propose a multi-stream approach with knowledge distillation to classify epileptic seizures and psychogenic non-epileptic seizures. The proposed framework utilizes multi-stream information from keypoints and appearance from both body and face. We take the detected keypoints through time as spatio-temporal graph and train it with an adaptive graph convolutional networks to model the spatio-temporal dynamics throughout the seizure event. Besides, we regularize the keypoint features with complementary information from the appearance stream by imposing a knowledge distillation mechanism. We demonstrate the effectiveness of our approach by conducting experiments on real-world seizure videos. The experiments are conducted by both seizure-wise cross validation and leave-one-subject-out validation, and with the proposed model, the performances of the F1-scorelaccuracy are 0.89/0.87 for seizure-wise cross validation, and 0.75/0.72 for leave-one-subject-out validation.
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