Trigka Maria, Dritsas Elias
Industrial Systems Institute (ISI), Athena Research and Innovation Center, 26504 Patras, Greece.
Sensors (Basel). 2025 Jan 17;25(2):531. doi: 10.3390/s25020531.
The integration of deep learning (DL) into image processing has driven transformative advancements, enabling capabilities far beyond the reach of traditional methodologies. This survey offers an in-depth exploration of the DL approaches that have redefined image processing, tracing their evolution from early innovations to the latest state-of-the-art developments. It also analyzes the progression of architectural designs and learning paradigms that have significantly enhanced the ability to process and interpret complex visual data. Key advancements, such as techniques improving model efficiency, generalization, and robustness, are examined, showcasing DL's ability to address increasingly sophisticated image-processing tasks across diverse domains. Metrics used for rigorous model evaluation are also discussed, underscoring the importance of performance assessment in varied application contexts. The impact of DL in image processing is highlighted through its ability to tackle complex challenges and generate actionable insights. Finally, this survey identifies potential future directions, including the integration of emerging technologies like quantum computing and neuromorphic architectures for enhanced efficiency and federated learning for privacy-preserving training. Additionally, it highlights the potential of combining DL with emerging technologies such as edge computing and explainable artificial intelligence (AI) to address scalability and interpretability challenges. These advancements are positioned to further extend the capabilities and applications of DL, driving innovation in image processing.
深度学习(DL)与图像处理的融合推动了变革性进展,使其具备了传统方法难以企及的能力。本综述深入探讨了重新定义图像处理的深度学习方法,追溯其从早期创新到最新前沿发展的演变历程。它还分析了显著增强处理和解释复杂视觉数据能力的架构设计和学习范式的发展。研究了诸如提高模型效率、泛化能力和鲁棒性等关键进展,展示了深度学习在跨不同领域处理日益复杂的图像处理任务方面的能力。还讨论了用于严格模型评估的指标,强调了在各种应用背景下性能评估的重要性。深度学习在图像处理中的影响通过其应对复杂挑战和产生可操作见解的能力得以凸显。最后,本综述确定了潜在的未来方向,包括整合量子计算和神经形态架构等新兴技术以提高效率,以及采用联邦学习进行隐私保护训练。此外,它强调了将深度学习与边缘计算和可解释人工智能(AI)等新兴技术相结合以应对可扩展性和可解释性挑战的潜力。这些进展有望进一步扩展深度学习的能力和应用,推动图像处理领域的创新。