Deep Convolutional Neural Network (CNN) for Large-Scale Images Classification

H. Eghbali, Najmeh Hajihosseini
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引用次数: 2

Abstract

In the field of machine vision and image classification, many models and methods have been introduced, but explicitly, different algorithms and models of neural network based researches have acquired a great importance among image classification models. beside the applications of this science in identifying patterns, image processing, artificial intelligence, and robot control, on the other hand the different influence aspects in daily and real life is indispensable to every point of view is such as agricultural domains, weather forecasts, medical sciences, engineering and so on. The accuracy and the executive algorithm path are very important in recognition and classification result. The main objective of these architectures is to provide a model similar to the internal system of the human brain to analyze various systems based on experiences, here-at the final goal of these algorithms is the possibility to create the training flow in artificial networks, in order to provide deep learning so that the network can diagnosis like human brain. This is another aspect of the architectures and the subject of the algorithm implementation accuracy as the model ability for recognize images and act like human brain?
深度卷积神经网络(CNN)用于大规模图像分类
在机器视觉和图像分类领域,已经引入了许多模型和方法,但显然,在图像分类模型中,基于神经网络研究的不同算法和模型占有重要地位。除了在模式识别、图像处理、人工智能和机器人控制方面的应用外,另一方面,在日常和现实生活中对每个观点都不可或缺的不同影响方面是如农业领域、天气预报、医学科学、工程等。算法的准确性和执行路径对识别和分类的效果至关重要。这些架构的主要目标是提供一个类似于人脑内部系统的模型,以基于经验分析各种系统,在这里,这些算法的最终目标是在人工网络中创建训练流的可能性,以便提供深度学习,使网络可以像人脑一样进行诊断。这是架构的另一个方面和算法实现的主题准确性作为识别图像和像人类大脑一样工作的模型能力?
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