Terbe Dániel, Orzó László, Bicsák Barbara, Zarándy Ákos
HUN-REN Institute for Computer Science and Control (SZTAKI), 1111 Budapest, Hungary.
Sensors (Basel). 2024 Feb 1;24(3):948. doi: 10.3390/s24030948.
This paper introduces a noise augmentation technique designed to enhance the robustness of state-of-the-art (SOTA) deep learning models against degraded image quality, a common challenge in long-term recording systems. Our method, demonstrated through the classification of digital holographic images, utilizes a novel approach to synthesize and apply random colored noise, addressing the typically encountered correlated noise patterns in such images. Empirical results show that our technique not only maintains classification accuracy in high-quality images but also significantly improves it when given noisy inputs without increasing the training time. This advancement demonstrates the potential of our approach for augmenting data for deep learning models to perform effectively in production under varied and suboptimal conditions.
本文介绍了一种噪声增强技术,旨在增强先进的深度学习模型对图像质量下降的鲁棒性,这是长期记录系统中常见的挑战。我们通过数字全息图像分类进行了验证,利用一种新颖的方法合成并应用随机彩色噪声,解决此类图像中常见的相关噪声模式问题。实证结果表明,我们的技术不仅在高质量图像中保持分类精度,而且在处理噪声输入时能显著提高精度,同时不增加训练时间。这一进展证明了我们的方法在为深度学习模型扩充数据方面的潜力,使其能在各种次优条件下有效地投入实际应用。