Hybrid Image Classification Model using ResNet101 and VGG16

G. Surekha, Patlolla Sai Keerthana, Nallantla Jaswanth Varma, Tummala Sai Gopi
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Abstract

Deep convolution neural networks have made sig-nificant advances in object identification. The popularity of machine learning-based image classification has increased as a result of developments in deep learning algorithms that makes it possible to extract features from images. Yet, conventional image classification algorithms are far too incorrect and untrustworthy to address the problem. Automation is crucial due to the vast geographic areas that must be explored and the scarcity of researchers available to carry out the searches. The proposed work employs deep learning-based image classification using a hybrid model of ResNet101 and VGG16 to address the challenges of image classification in large geographic areas using satellite images.
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基于ResNet101和VGG16的混合图像分类模型
深度卷积神经网络在目标识别方面取得了重大进展。由于深度学习算法的发展,使得从图像中提取特征成为可能,基于机器学习的图像分类越来越受欢迎。然而,传统的图像分类算法太不正确和不可信,无法解决这个问题。由于必须探索的广阔地理区域和可用于进行搜索的研究人员的稀缺,自动化是至关重要的。提出的工作采用基于深度学习的图像分类,使用ResNet101和VGG16的混合模型来解决使用卫星图像在大地理区域进行图像分类的挑战。
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