用于热人脸检测和跟踪的深度特征类激活图

A. Kwaśniewska, J. Rumiński, P. Rad
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引用次数: 49

摘要

最近,由于卷积神经网络的进步,许多计算机视觉任务的能力有了显着提高。在我们的研究中,我们证明了它也可以用于从便携式相机获得的低分辨率热图像中进行人脸检测。我们研究中使用的相机的物理尺寸允许将其嵌入可穿戴设备或老年人和残疾人的室内远程监控解决方案中。所提出的架构的好处在热视频序列上得到了实验验证,在各种场景中获得,以解决远程诊断的可能限制:执行诊断的人的运动和被检查的人的运动。实现了较短的处理时间(42.05±0.21ms)以及较高的模型精度(误报- 0.43%;患者专注于某项任务的真阳性(89.2%)清楚地表明,热成像中图像分类和面部跟踪领域的当前技术水平明显优于其他技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep features class activation map for thermal face detection and tracking
Recently, capabilities of many computer vision tasks have significantly improved due to advances in Convolutional Neural Networks. In our research, we demonstrate that it can be also used for face detection from low resolution thermal images, acquired with a portable camera. The physical size of the camera used in our research allows for embedding it in a wearable device or indoor remote monitoring solution for elderly and disabled people. The benefits of the proposed architecture were experimentally verified on the thermal video sequences, acquired in various scenarios to address possible limitations of remote diagnostics: movements of the person performing a diagnose and movements of the examined person. The achieved short processing time (42.05±0.21ms) along with high model accuracy (false positives - 0.43%; true positives for the patient focused on a certain task - 89.2%) clearly indicates that the current state of the art in the area of image classification and face tracking in thermography was significantly outperformed.
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