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Deep-Neural Genetic Algorithm Optimization Analysis for Forgery Detection of Banknotes

机译:深神经遗传算法纸币伪造检测的优化分析

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Metaheuristic algorithms aim to find high performing, near-optimal solutions with reasonable computing costs. Using the process of natural selection that belongs to a set of evolutionary algorithms, are Genetic Algorithms. These algorithms intelligently exploit random search over the data in search of a solution space for better performance. Detection of forgery in legal documents by an automated system remains a valid problem of today. In this paper, the identification and detection of forgery in the monetary notes is performed by using deep neural-based Genetic Algorithms. An Artificial Neural Network was used for training on the banknote dataset and the learned weights were vectorized for Genetic Algorithm processing. Genetic Algorithm is explained in detail along with the working of the Fitness model that determines the efficiency of the trained model. The model achieved a high-performance accuracy of 94% with the fitness score of95.2. The improvement of the model with the infusion of trainable weights from a deep neural model is represented and analyzed.
机译:综合性算法旨在找到高性能,具有合理的计算成本的近乎最佳解决方案。使用属于一组进化算法的自然选择的过程是遗传算法。这些算法智能地利用数据的随机搜索,以搜索解决方案空间以获得更好的性能。通过自动化系统检测法律文件中的伪造仍然是今天的有效问题。在本文中,通过使用深神经基遗传算法进行货币票据中伪造的识别和检测。人工神经网络用于纸币数据集的培训,并且学习权重被遗传算法处理。详细解释了遗传算法以及确定训练模型效率的健身模型的工作。该模型的高性能精度为94%,适合度得分为95.2。用来自深神经模型的可训练重量的模型的改进是表示和分析的。

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