基于迁移学习的深度神经网络在无人机远程目标检测中的应用

M. Woźniak, Michał Wieczorek, J. Siłka
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引用次数: 23

摘要

在本文中,我们提出了一种新的用于船舶远程检测的深度学习组合模型。该架构由ResNet、DenseNet和CNN的新衍生产品组成一个全局分类器。由于这种模型的训练要求很高,我们也提出了迁移学习的新命题。每个体系结构都是在不同的输入数据上进行训练的。在最后阶段,它们都被组合成一个全局模型,通过使用来自所有输入集合的增强图像来完成训练。提出的训练模型使分类特征得到改进。数值实验结果表明,我们新提出的基于迁移学习模型的深度学习分类器在经过40次迭代训练后达到了99%的准确率、98%的精度、99%的召回率和97%的特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep neural network with transfer learning in remote object detection from drone
In this article we present a model of new deep learning composition for remote ship detection. Proposed architecture is composed of newly developed derivatives of ResNet, DenseNet and CNN composed into one global classifier. Since training of such model is demanding we have developed also a new proposition of transfer learning. Each of architectures was trained on different input data. In the final phase they are all composed into one global model for which training is finished by the use of augmented images from all the input collections. The proposed model of training enabled improved features of classification. Results of numerical experiments have shown that our newly proposed deep learning classifier with developed transfer learning model presents values of 99% Accuracy, 98% Precision, 99% Recall and 97% Specificity after training in only 40 iterations.
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