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A Novel Image Processing Approach Combining a 'Coupled Nonlinear Oscillators'-based Paradigm with Cellular Neural Networks for Dynamic Robust Contrast Enhancement

机译:一种新颖的图像处理方法,将“基于耦合的非线性振荡器的范例与蜂窝神经网络进行动态鲁棒对比度增强

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In this paper, a systematic discussion of both pros and cons of two well-known traditional approaches for image contrast enhancement is conducted. The first approach is based on the CNN paradigm and the second one is based on the coupled nonlinear oscillators' paradigm for image processing. In the later case an extensive bifurcation analysis is carried out and analytical formulas are derived to define the various states of the system. Both equilibrium and oscillatory states of the system are depicted. It is shown that each of these states has a significant impact on the quality of the resulting image contrast enhancement. A benchmarking is considered whereby a comparison is performed between the results obtained by a CNN-based processing, on one side, with those obtained by a 'coupled non linear oscillators' based processing, on the other side. The superiority of the later approach (for contrast enhancement) is demonstrated both analytically and through various experiments. A major drawback of the CNN based image processing is the practical inability to adjust/re-calculate templates in real-time in face of a dynamic scene with input images experiencing visibility and/or lighting related spatio-temporal dynamics. Finally, a novel hybrid approach integrating both schemes in an efficient way is proposed: the 'coupled nonlinear oscillators' based image processing is the main processing scheme that is however realized on top of a CNN processors' framework. The hybrid approach does prove to overcome key practical problems faced by both original approaches.
机译:在本文中,进行了对两种众所周知的传统传统的图像对比增强方法的优点和缺点的系统讨论。第一方法基于CNN范例,第二种方法基于耦合的非线性振荡器的图像处理范例。在后面的情况下,进行广泛的分叉分析,得到分析公式以定义系统的各种状态。系统的均衡和振动状态都被描绘出来。结果表明,这些状态中的每一个对所产生的图像对比增强的质量产生重大影响。考虑基准测试,由此在一侧上由基于CNN的处理获得的结果进行比较,其中由另一侧的基于“耦合的非线性振荡器”的处理获得的结果。在分析和通过各种实验中证明了以后的方法(用于对比度增强)的优越性。基于CNN的图像处理的主要缺点是实际无法在动态场景中实时调整/重新计算模板,其中输入图像遇到可见性和/或照明相关的时空动态。最后,提出了一种以有效的方式集成了两种方案的新型混合方法:“耦合非线性振荡器”的图像处理是在CNN处理器框架之上实现的主要处理方案。混合方法确实证明克服了两种原始方法所面临的关键实际问题。

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