MobileNet-V2: An Enhanced Skin Disease Classification by Attention and Multi-Scale Features.

Nirupama, Virupakshappa
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Abstract

The increasing prevalence of skin diseases necessitates accurate and efficient diagnostic tools. This research introduces a novel skin disease classification model leveraging advanced deep learning techniques. The proposed architecture combines the MobileNet-V2 backbone, Squeeze-and-Excitation (SE) blocks, Atrous Spatial Pyramid Pooling (ASPP), and a Channel Attention Mechanism. The model was trained on four diverse datasets such as PH2 dataset, Skin Cancer MNIST: HAM10000 dataset, DermNet. dataset, and Skin Cancer ISIC dataset. Data preprocessing techniques, including image resizing, and normalization, played a crucial role in optimizing model performance. In this paper, the MobileNet-V2 backbone is implemented to extract hierarchical features from the preprocessed dermoscopic images. The multi-scale contextual information is fused by the ASPP model for generating a feature map. The attention mechanisms contributed significantly, enhancing the extraction ability of inter-channel relationships and multi-scale contextual information for enhancing the discriminative power of the features. Finally, the output feature map is converted into probability distribution through the softmax function. The proposed model outperformed several baseline models, including traditional machine learning approaches, emphasizing its superiority in skin disease classification with 98.6% overall accuracy. Its competitive performance with state-of-the-art methods positions it as a valuable tool for assisting dermatologists in early classification. The study also identified limitations and suggested avenues for future research, emphasizing the model's potential for practical implementation in the field of dermatology.

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MobileNet-V2:通过注意力和多尺度特征增强皮肤病分类能力
皮肤病的发病率越来越高,需要准确高效的诊断工具。本研究利用先进的深度学习技术引入了一种新型皮肤病分类模型。所提出的架构结合了 MobileNet-V2 主干网、挤压-激发(SE)区块、Atrous 空间金字塔池化(ASPP)和通道注意机制。该模型在四个不同的数据集上进行了训练,如 PH2 数据集、皮肤癌 MNIST 数据集和 HAM10000 数据集:数据集和皮肤癌 ISIC 数据集。数据预处理技术,包括图像大小调整和归一化,在优化模型性能方面发挥了至关重要的作用。本文利用 MobileNet-V2 骨干网从预处理后的皮肤镜图像中提取分层特征。多尺度上下文信息由 ASPP 模型融合生成特征图。注意力机制的贡献很大,它增强了对通道间关系和多尺度上下文信息的提取能力,从而提高了特征的判别能力。最后,通过 softmax 函数将输出特征图转换为概率分布。所提出的模型优于包括传统机器学习方法在内的几种基线模型,在皮肤病分类方面表现突出,总体准确率达 98.6%。与最先进的方法相比,该模型的性能更具竞争力,是协助皮肤科医生进行早期分类的重要工具。研究还指出了其局限性,并提出了未来的研究方向,强调了该模型在皮肤病学领域的实际应用潜力。
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