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首页> 外文期刊>IEEE Transactions on Circuits and Systems. 1, Fundamental Theory and Applications >Object-oriented image analysis using the CNN universal machine: new analogic CNN algorithms for motion compensation, image synthesis, and consistency observation
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Object-oriented image analysis using the CNN universal machine: new analogic CNN algorithms for motion compensation, image synthesis, and consistency observation

机译:使用CNN万能机进行面向对象的图像分析:用于运动补偿,图像合成和一致性观察的新型模拟CNN算法

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摘要

Image-analysis algorithms are of great interest in the context of object-oriented coding schemes. With reference to the utilization of the cellular neural network (CNN) universal machine for object-oriented image analysis, this paper presents new analogic CNN algorithms for obtaining motion compensation, image synthesis, and consistency observation. Along with the already developed segmentation and object labeling technique, the proposed method represents a framework for implementing CNN-based real-time image analysis. Simulation results, carried out for different video sequences, confirm the validity of the approach developed herein.
机译:在面向对象的编码方案中,图像分析算法引起了极大的兴趣。参照利用细胞神经网络(CNN)通用机器进行面向对象的图像分析,本文提出了用于获得运动补偿,图像合成和一致性观察的新型CNN算法。连同已经开发的分割和对象标记技术,该方法代表了用于实现基于CNN的实时图像分析的框架。针对不同视频序列执行的仿真结果证实了本文开发的方法的有效性。

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