论文标题
解释人类步态的自动性别分类
Explaining automated gender classification of human gait
论文作者
论文摘要
最先进的机器学习(ML)模型在对步态分析数据进行分类方面非常有效,但是,他们缺乏为其预测提供解释。这个“黑框”的特征使得无法理解哪些输入模式,ML模型基于其预测。本研究调查了可解释的人工智能方法,即层次相关性传播(LRP)是否对增强步态分类中ML预测的解释性有用。研究问题是:哪些输入模式与自动性别分类模型最相关,并且它们是否与文献中确定的特征相对应?我们在赤脚步行62名健康参与者的过程中,使用了包含五个双侧地面反应力(GRF)录音的Gaitrec数据集的子集:34名女性和28名男性。每个输入信号(右侧和左侧)在串联之前对归一化,并馈入多层卷积神经网络(CNN)。分类精度是通过分层十倍的交叉验证获得的。为了识别性别特定的模式,使用LRP得出了输入相关性分数。 83.3%的CNN的平均分类精度表现出与零规则基线相比54.8%的明显优势。
State-of-the-art machine learning (ML) models are highly effective in classifying gait analysis data, however, they lack in providing explanations for their predictions. This "black-box" characteristic makes it impossible to understand on which input patterns, ML models base their predictions. The present study investigates whether Explainable Artificial Intelligence methods, i.e., Layer-wise Relevance Propagation (LRP), can be useful to enhance the explainability of ML predictions in gait classification. The research question was: Which input patterns are most relevant for an automated gender classification model and do they correspond to characteristics identified in the literature? We utilized a subset of the GAITREC dataset containing five bilateral ground reaction force (GRF) recordings per person during barefoot walking of 62 healthy participants: 34 females and 28 males. Each input signal (right and left side) was min-max normalized before concatenation and fed into a multi-layer Convolutional Neural Network (CNN). The classification accuracy was obtained over a stratified ten-fold cross-validation. To identify gender-specific patterns, the input relevance scores were derived using LRP. The mean classification accuracy of the CNN with 83.3% showed a clear superiority over the zero-rule baseline of 54.8%.