Abstract:Face alignment in thermal infrared images is crucial for accurately extracting facial temperature data, as its positioning precision directly impacts the accuracy of temperature analysis in various facial regions. However, most prevalent face alignment algorithms designed for visible face images encounter limitations when directly applied to infrared thermal images, resulting in insufficient accuracy. To address this issue, a face alignment algorithm specifically designed for thermal infrared images, leveraging a multi-scale convolution attention mechanism, is introduced. This algorithm effectively integrates the multi-scale convolutional attention mechanism with an inverted residual convolutional network, while incorporating the wing loss as the loss function to further enhance the network models feature extraction capabilities. On both an open thermal infrared face dataset and a self-collected facial palsy dataset, the algorithm achieves normalized mean errors of 3.23% and 3.94%, respectively. This represents a significant improvement in localization accuracy for facial features compared to traditional methods, extending its applicability to populations with facial palsy. This advancement holds immense potential for various applications.
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