基于FRCNN的斑秃深度学习识别与分类

C. Saraswathi, B. Pushpa
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摘要

由于不健康的生活方式、荷尔蒙失衡等原因,大多数患者都患有皮炎、秃顶等头皮毛发问题。最常见的脱发类型是斑秃(AA),通常使用医学图像处理模型进行检测和诊断。然而,它们对于撞击或交叉毛发是不可靠的,并且直接受到设计变量的影响。因此,利用成像数据中的深度学习(DL)来检测和诊断AA。同样,各种DL模型可以识别和诊断各种头皮头发状况。同样,各种DL模型也可以识别和诊断各种头皮毛发状况。为此,本文提出了一种快速残差卷积神经网络(FRCNN)模型来同时识别不同类型秃顶个体的AA和头皮状况。FRCNN的主要目标是利用感兴趣区域(ROI)投影层来提高AA和头皮毛发症状的识别精度。在该FRCNN模型中,首先将给定的头皮和AA图像馈送到ROI投影层和深度卷积层提取特征映射,然后通过ROI池对特征映射进行聚合,得到最终的特征向量表示。然后,将得到的特征向量与softmax分类器一起传递到Fully Connected (FC)层,以识别AA的各种情况。最后,测试结果表明,与其他模型相比,FRCNN在头发和头皮图像数据库上的准确率达到了84.3%。
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FRCNN based Deep Learning for Identification and Classification of Alopecia Areata
Most patients suffer from scalp hair issues like dermatitis, baldness, and so on as an outcome of unhealthy lifestyles, hormonal imbalance, and so on. The most common type of alopecia is alopecia areata (AA), which is typically detected and diagnosed using medical image processing models. However, they are unreliable for striking or intersecting hairs and are directly influenced by design variables. Deep Learning (DL) in imaging data was thus used to detect and diagnose AA. Similarly, various DL models recognized and diagnosed various scalp hair conditions. Likewise, various scalp hair conditions were recognized and diagnosed by the various DL models. Hence, this paper proposes a Faster Residual Convolutional Neural Network (FRCNN) model to recognize AA and scalp conditions together for many individuals with different kinds of baldness. The main goal of the FRCNN is to use a Region-Of-Interest (ROI) projection layer to enhance the recognition accuracy of AA and scalp hair symptoms. In this FRCNN model, the given scalp and AA images are initially fed to the ROI projection layer and deep convolutional layer to extract feature maps, which are aggregated by the ROI pooling to get the final feature vector representation. Then, the obtained feature vector is passed to the Fully Connected (FC) layer accompanied by the softmax classifier to recognize the various conditions of AA. Finally, the test results show that the FRCNN on hair and scalp image databases achieves an accuracy of 84.3% compared to the other models.
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