基于DA-GAN的超声体积投影成像结构化噪声去除方法

Zixun Huang, Rui Zhao, Frank H. F. Leung, K. Lam, S. Ling, Juan Lyu, Sunetra Banerjee, T. Lee, De Yang, Y. Zheng
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引用次数: 4

摘要

超声体积投影成像(VPI)由于其无害、灵活和有效的评估脊柱侧凸,从临床角度来看具有吸引力。然而,硬件设备的限制降低了生成的图像内容与强结构化噪声。由于参考数据的不可获得性和退化模型的不可预测性,VPI图像恢复是一个具有挑战性的问题。在本文中,我们提出了一种新的框架来学习非配对样本的结构化噪声去除。我们在生成对抗网络中引入了注意机制,通过关注显著的腐败模式来增强学习。我们还提出了一种双对抗学习策略,并将去噪器与分割模型相结合以产生面向任务的无噪声估计。实验结果表明,该方法可以提高脊柱图像的视觉质量和分割精度。
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DA-GAN: Learning Structured Noise Removal In Ultrasound Volume Projection Imaging For Enhanced Spine Segmentation
Ultrasound volume projection imaging (VPI) has shown to be appealing from a clinical perspective, because of its harmlessness, flexibility, and efficiency in scoliosis assessment. However, the limitations in hardware devices degrade the resultant image content with strong structured noise. Owing to the unavailability of reference data and the unpredictable degradation model, VPI image recovery is a challenging problem. In this paper, we propose a novel framework to learn the structured noise removal from unpaired samples. We introduce the attention mechanism into the generative adversarial network to enhance the learning by focusing on the salient corrupted patterns. We also present a dual adversarial learning strategy and integrate the denoiser with a segmentation model to produce the task-oriented noiseless estimation. Experimental results show that the proposed method can improve both the visual quality and the segmentation accuracy on spine images.
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