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基于深度残差和多尺度编解码器网络的盲显微镜图像去噪。

Blind microscopy image denoising with a deep residual and multiscale encoder/decoder network.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:3483-3486. doi: 10.1109/EMBC46164.2021.9630502.

DOI:10.1109/EMBC46164.2021.9630502
PMID:34891990
Abstract

In computer-aided diagnosis (CAD) focused on microscopy, denoising improves the quality of image analysis. In general, the accuracy of this process may depend both on the experience of the microscopist and on the equipment sensitivity and specificity. A medical image could be corrupted by several perturbations during image acquisition. Nowadays, CAD deep learning applications pre-process images with image denoising models to reinforce learning and prediction. In this work, an innovative and lightweight deep multiscale convolutional encoder-decoder neural network is proposed. Specifically, the encoder uses deterministic mapping to map features into a hidden representation. Then, the latent representation is rebuilt to generate the reconstructed denoised image. Residual learning strategies are used to improve and accelerate the training process using skip connections in bridging across convolutional and deconvolutional layers. The proposed model reaches on average 38.38 of PSNR and 0.98 of SSIM on a test set of 57458 images overcoming state-of-the-art models in the same application domain.Clinical relevance - Encoder-decoder based denoiser enables industry experts to provide more accurate and reliable medical interpretation and diagnosis in a variety of fields, from microscopy to surgery, with the benefit of real-time processing.

摘要

在专注于显微镜的计算机辅助诊断 (CAD) 中,去噪可以提高图像分析的质量。通常,该过程的准确性可能既取决于显微镜专家的经验,又取决于设备的灵敏度和特异性。医学图像在获取过程中可能会受到多种干扰。如今,CAD 深度学习应用程序使用图像去噪模型对图像进行预处理,以增强学习和预测。在这项工作中,提出了一种创新的轻量级深度多尺度卷积编解码器神经网络。具体来说,编码器使用确定性映射将特征映射到隐藏表示中。然后,重建潜在表示以生成重建的去噪图像。使用残差学习策略通过在卷积和反卷积层之间的跳过连接来改进和加速训练过程。所提出的模型在 57458 张图像的测试集上平均达到 38.38 的 PSNR 和 0.98 的 SSIM,在相同的应用领域中超过了最先进的模型。临床相关性——基于编解码器的去噪器使行业专家能够在各种领域(从显微镜到手术)提供更准确和可靠的医学解释和诊断,其优势在于实时处理。

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