基于浅CNN的面部毛孔分割算法

Sunyong Seo, S. Yoo, Semin Kim, Daeun Yoon, Jonghan Lee
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引用次数: 1

摘要

毛孔是皮肤上细小的开口,毛发和皮脂通过这些开口出来,在面部皮肤上形成孔洞。毛孔粗大是关心皮肤的人最关心的问题之一。补救措施包括使用化妆品和减少毛孔的医疗程序。意识到一个人的面部毛孔状况和适当的管理是必要的,以防止毛孔恶化。基于经典图像处理的孔隙分割算法具有精度低、计算量大的特点。此外,这些算法要求在光控环境中拍摄输入图像。这些问题都是通过使用光专业化的数据增强方法和具有窄接受域的神经网络来识别局部特征来解决的。我们介绍了Pore-Net,这是一种可以在移动设备上使用的算法,使用自拍照图像作为输入,以较低的计算成本分割毛孔。Pore-Net的算法流程如下。首先,采用基于置信度图的非编解码器分割,降低了高分辨率输入图像的计算成本。其次,基于感兴趣区域(ROI)对输入进行预处理和后处理,使其在移动设备上稳健性地工作。与具有相似性能的二元分割模型相比,Pore-Net在推理时间和乘法累积(mac)方面的计算成本最低。
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Facial Pore Segmentation Algorithm using Shallow CNN
Poresare minute skin openings through which hair and sebum come out and appear as holes in the facial skin. Enlarged pore is one of the major concerns for people who care about their skin. Remedies include the use of cosmetics and pore-reduction medical procedures. Awareness of the condition of one's facial pores and appropriate management are required to prevent pore deterioration. Pore segmentation algorithms based on classical image processing are characterized by low accuracy and high computational costs. In addition, these algorithms require that input images be taken in light-controlled environments. These issues were resolved by using a light-specialized data augmentation method and a neural network with a narrow receptive field for identifying local features. We introduce Pore-Net, an algorithm that can be used on mobile devices to segment pores with a low computational cost, using selfie-camera images as an input. Pore-Net has the following algorithm flow. First, a confidence map-based segmentation without encoder-decoder form is applied to lower the computational costs on high-resolution input images. Second, pre- and post-processing for input based on region-of-interest(ROI) of facial landmarks are performed to work robustly in mobile devices. Pore-Net achieved the lowest computational cost in inference time and multiply-and-accumulates(MACs) when compared with the binary segmentation models with similar performance in intersection-over-union(IoU).
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