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Natural Scene Classification Using Deep Learning

机译:使用深度学习进行自然场景分类

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摘要

In Image classification we classify image into one of the predefined classes. In conventional way, people use different computer vision techniques to extract features from images and different machine learning algorithms use these extracted features to classify the images. It has become very difficult task to classify the images into interpretative classes. Apart from various learning algorithms the accuracy and performance of the model mostly depends on the trained dataset and the algorithm used. In this paper we have proposed a system to classify the scenery images into different groups of sunset, desert, mountains, trees and sea. In this paper the proposed approach for image classification makes essential use of machine learning methods. We focus on deep learning techniques for feature extraction and classification of images. In this paper, we propose a model which does not require creating multiple binary models instead it has single model which predicts the probabilities of different labels and has used these probabilistic threshold values for respective label to convert those probabilities into presence and absence of class/label. This method results into higher accuracy and requires less time as compared to other methods.
机译:在图像分类中,我们将图像分类为预定义的类别之一。以传统方式,人们使用不同的计算机视觉技术从图像中提取特征,并且不同的机器学习算法使用这些提取的特征对图像进行分类。将图像分类为解释类已经变得非常困难。除了各种学习算法,模型的准确性和性能主要取决于训练后的数据集和所使用的算法。在本文中,我们提出了一种将风景图像分类为日落,沙漠,山脉,树木和海洋的不同类别的系统。在本文中,提出的图像分类方法主要使用了机器学习方法。我们专注于深度学习技术,用于图像的特征提取和分类。在本文中,我们提出了一个模型,该模型不需要创建多个二进制模型,而是具有一个可以预测不同标签概率的模型,并且已使用各个标签的概率阈值将这些概率转换为存在/不存在类别/标签的概率。与其他方法相比,此方法具有更高的准确性,并且需要的时间更少。

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