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Action classification in polarimetric infrared imagery via diffusion maps

机译:偏振红外图像中通过扩散图进行的动作分类

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This work explores the application of a nonlinear dimensionality reduction technique known as diffusion maps for performing action classification in polarimetric infrared video sequences. The diffusion maps algorithm has been used successfully in a variety of applications involving the extraction of low-dimensional embeddings from high-dimensional data. Our dataset is composed of eight subjects each performing three basic actions: walking, walking while carrying an object in one hand, and running. The actions were captured with a polarized microgrid sensor operating in the longwave portion of the electromagnetic (EM) spectrum with a temporal resolution of 24 Hz, yielding the Stokes traditional intensity (S0) and linearly polarized (S1, S2) components of data. Our work includes the use of diffusion maps as an unsupervised dimensionality reduction step prior to action classification with three conventional classifiers: the linear perceptron algorithm, the k nearest neighbors (KNN) algorithm, and the kernel-based support vector machine (SVM). We present classification results using both the low-dimensional principal components via PCA and the low-dimensional diffusion map embedding coordinates of the data for each class. Results indicate that the diffusion map lower-dimensional embeddings provide a salient feature space for action classification, yielding an increase of overall classification accuracy by ∼40% compared to PCA. Additionally, we examine the utility that the polarimetric sensor may provide by concurrently performing these analyses in the polarimetric feature spaces.
机译:这项工作探索非线性降维技术(称为扩散图)在极化红外视频序列中进行动作分类的应用。扩散图算法已成功用于包括从高维数据中提取低维嵌入的各种应用中。我们的数据集由八个主题组成,每个主题执行三个基本动作:走路,一只手拿着一个物体时走路和跑步。动作是通过极化微电网传感器捕获的,该传感器在电磁(EM)谱的长波部分中工作,时间分辨率为24 Hz,产生斯托克斯传统强度(S 0 )并呈线性极化(S数据的 1 ,S 2 )组成部分。我们的工作包括使用扩散图作为使用三个常规分类器进行动作分类之前的无监督降维步骤:线性感知器算法,k最近邻(KNN)算法和基于内核的支持向量机(SVM)。我们通过PCA同时使用低维主成分和每个类的数据的低维扩散图嵌入坐标来提供分类结果。结果表明,扩散图的低维嵌入为动作分类提供了显着的特征空间,与PCA相比,整体分类精度提高了约40%。此外,我们通过在极化特征空间中同时执行这些分析来检查极化传感器可以提供的实用性。

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