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Application of Stacked Sparse Autoencoder in Automated Detection of Glaucoma in Fundus Images

机译:堆叠式稀疏自动编码器在眼底图像青光眼自动检测中的应用

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In this contribution, intelligent identification of glaucoma from digital fundus images using stacked sparse autoencoder (SSAE) is proposed. The fundus images are initially converted to gray-scale and normalized w.r.t., background illuminance while maintaining contrast constancy across the dataset. Unfolded feature vectors from the pre-processed with proper rescaling and grays-scale converted fundus images are fed to SSAE for learning efficient feature representation and classification thereof using a softmax layer. A comparative evaluation highlighting the superiority of SSAE method with existing state-of the art techniques is presented to validate its efficacy in glaucoma detection. The proposed framework can be used as a clinical decision support system assisting ophthalmologists in confirming their diagnosis with high reliability & accuracy.
机译:在此贡献中,提出了使用堆叠式稀疏自动编码器(SSAE)从数字眼底图像中智能识别青光眼的方法。眼底图像最初会转换为灰度并标准化w.r.t.背景照度,同时在整个数据集中保持对比度恒定。将经过适当缩放和灰度转换后的眼底图像预处理后的展开特征向量馈送到SSAE,以使用softmax层学习有效的特征表示和分类。提出了一项比较评估,突出显示了SSAE方法与现有技术水平的优势,以验证其在青光眼检测中的功效。所提出的框架可以用作临床决策支持系统,以帮助眼科医生以高可靠性和准确性确认其诊断。

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