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首页> 外文期刊>Journal of Applied Remote Sensing >Cellular neural network-based hybrid approach toward automatic image registration
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Cellular neural network-based hybrid approach toward automatic image registration

机译:基于细胞神经网络的混合图像自动配准方法

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摘要

Image registration is a key component of various image processing operations that involve the analysis of different image data sets. Automatic image registration domains have witnessed the application of many intelligent methodologies over the past decade;;however, inability to properly model object shape as well as contextual information has limited the attainable accuracy. A framework for accurate feature shape modeling and adaptive resampling using advanced techniques such as vector machines, cellular neural network (CNN), scale invariant feature transform (SIFT), coreset, and cellular automata is proposed. CNN has been found to be effective in improving feature matching as well as resampling stages of registration and complexity of the approach has been considerably reduced using coreset optimization. The salient features of this work are cellular neural network approach-based SIFT feature point optimization, adaptive resampling, and intelligent object modelling. Developed methodology has been compared with contemporary methods using different statistical measures. Investigations over various satellite images revealed that considerable success was achieved with the approach. This system has dynamically used spectral and spatial information for representing contextual knowledge using CNN-prolog approach. This methodology is also illustrated to be effective in providing intelligent interpretation and adaptive resampling.
机译:图像配准是涉及分析不同图像数据集的各种图像处理操作的关键组成部分。在过去的十年中,自动图像注册领域见证了许多智能方法的应用;但是,由于无法正确地建模对象形状和上下文信息,限制了可达到的准确性。提出了使用诸如矢量机,细胞神经网络(CNN),尺度不变特征变换(SIFT),核集和细胞自动机等先进技术进行精确特征形状建模和自适应重采样的框架。已经发现CNN在改善特征匹配以及重采样注册阶段方面是有效的,并且使用核心集优化已大大降低了方法的复杂性。这项工作的显着特征是基于细胞神经网络方法的SIFT特征点优化,自适应重采样和智能对象建模。已使用不同的统计手段将发达的方法与当代方法进行了比较。对各种卫星图像的调查表明,该方法取得了相当大的成功。该系统已动态使用光谱和空间信息来表示使用CNN-prolog方法的上下文知识。还说明了此方法可有效提供智能解释和自适应重采样。

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