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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Cross-Dataset Transfer Driver Expression Recognition via Global Discriminative and Local Structure Knowledge Exploitation in Shared Projection Subspace
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Cross-Dataset Transfer Driver Expression Recognition via Global Discriminative and Local Structure Knowledge Exploitation in Shared Projection Subspace

机译:通过共享投影子空间的全局判别和本地结构知识开发的跨数据集传输驱动程序表达式识别

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摘要

Facial expression is one of the important characteristics of drivers during driving. It is very useful in safe driving detection. Recognizing drivers' expressions by the facial images can be solved with machine learning classification strategies. To obtain a reliable reorganization performance, most of approaches assume that the facial images in the training and testing datasets are independently and identically distributed. However, for real time drivers' facial expression recognition, due to vehicle motion, changes in illumination, noise and head movement, the features displayed for the training dataset may be not valid for the testing dataset. To solve this problem, a novel approach is proposed for cross-dataset transfer driver expression recognition via global discriminative and local structure knowledge exploitation in shared projection subspace (GD-LS-SS). By leaning a shared common subspace, GD-LS-SS utilizes the local geometrical structure of data by exploiting the knowledge of graph topology, meanwhile exploiting the global discriminative information by using the pairwise constrained knowledge between the source and labeled target data. Taking advantage of kernel trick, the kernel version of GD-LS-SS is proposed to learn the kernel projection for handling nonlinear cross-dataset transfer and to further promote the recognition accuracy. Experiments on the KMU-FED dataset show that the satisfactory recognition performance of GD-LS-SS outperforms several traditional non-transfer and related transfer approaches.
机译:面部表情是驾驶期间司机的重要特征之一。它在安全驾驶检测中非常有用。通过机器学习分类策略可以解决面部图像的驾驶员表达式。为了获得可靠的重组性能,大多数方法假设训练和测试数据集中的面部图像独立地和相同分布。然而,对于实时驱动器的面部表情识别,由于车辆运动,照明的变化,噪声和头部移动,为训练数据集显示的特征可能对测试数据集无效。为了解决这个问题,提出了一种通过共享投影子空间(GD-LS-SS)中的全局判别和局部结构知识开发的跨数据集转移驱动器表达式识别的新方法。通过倾斜共享公共子空间,GD-LS-SS通过利用图形拓扑的知识来利用数据的局部几何结构,同时通过使用源和标记的目标数据之间的成对受约束的知识来利用全局辨别信息。利用内核技巧,提出了GD-LS-SS的内核版本来学习用于处理非线性交叉数据集传输的内核投影,并进一步促进识别准确性。 KMu美联储数据集的实验表明,GD-LS-SS的令人满意的识别性能优于几种传统的非转移和相关传输方法。

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