利用深度神经网络上的类激活图定位垃圾分类

Andrea Abela, Thomas Gatt
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引用次数: 0

摘要

一场严重的全球废物危机目前正在发生,这源于我们缺乏责任感。这可以通过使用弱监督学习授权的人工智能自动化分离过程来解决。利用VGG、ResNet、MobileNet和DenseNet等CV中预训练好的CNN模型,创建了一个原型系统。原型显示了有希望的结果,最好的算法在被称为TrashNet和MINC的两个数据集上获得了超过80%的f1分数。有些算法也相当高效,在保持低于10Mb的情况下达到10FPS以上。由最佳模型的cam生成的定位精度在TrashNet上约为83%,在MINC上约为69%。这些结果表明,人工智能不仅可以通过数据集准确有效地对废物进行分类,而且还可以通过弱监督来整合准确的定位,从而更容易进行数据注释。
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Using Class Activation Maps on Deep Neural Networks to Localise Waste Classifications
A serious global waste crisis is currently in effect which originates from our lack of sense of duty. This can be resolved by automating the separation process using AI empowered by weakly supervised learning. A prototype system was created by using pre-trained CNN models in CV such as VGG, ResNet, MobileNet and DenseNet. The prototype showed promising results by having the best algorithms obtain an F1-score of over 80% on 2 datasets known as TrashNet and MINC. Some algorithms were also quite efficient, reaching over 10FPS while maintaining less than 10Mb. The localisation accuracy generated from the CAMs of the best models has shown to be around 83% on TrashNet and around 69% on MINC. These results show that not only is it possible through AI to accurately and efficiently classify waste through datasets, but it can also be used to integrate accurate localisation via weak supervision for easier data annotation.
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