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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Automatic Recognition and Classification Algorithm of Medical Images Based on Neural Network Machine Learning
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Automatic Recognition and Classification Algorithm of Medical Images Based on Neural Network Machine Learning

机译:基于神经网络机学习的医学图像自动识别与分类算法

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摘要

At present, image recognition technology is in the development era. Target recognition has become one of the most important research contents in the field of deep learning. How to identify the target accurately and effectively becomes the key, especially the convolution model with excellent performance is used as the model of target detection, which has very critical and important research value in the field of target detection and identification. From the perspective of several kinds of network models and referring to other models, this thesis makes structural improvement and comparison, showing its good structural advantages and effectively solving the problems existing in some target detection. The experimental results show that the network model mentioned in this thesis can be well used for image information recognition and other items, especially for face recognition and other detection tasks. Compared with the original convolution network, the model has higher accuracy, effectively reduces the computation of network parameters, reduces the consumption of hardware memory resources, and has good stability.
机译:目前,图像识别技术在开发时代。目标识别已成为深度学习领域中最重要的研究内容之一。如何准确且有效地识别目标成为关键,特别是具有出色性能的卷积模型作为目标检测的模型,在目标检测和识别领域具有非常关键和重要的研究价值。从几种网络模型的角度来看,参考其他模型,本文进行了结构性改进和比较,呈现了其良好的结构优势,有效解决了一些目标检测中存在的问题。实验结果表明,本文提到的网络模型可以很好地用于图像信息识别和其他项目,特别是对于面部识别和其他检测任务。与原始卷积网络相比,该模型具有更高的准确性,有效地减少了网络参数的计算,减少了硬件存储器资源的消耗,并且具有良好的稳定性。

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