利用Yolo网络模型和保形预测置信度预测落叶松病害

IF 1.4 4区 地球科学 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Ulf Norinder, Stephanie Lowry
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引用次数: 0

摘要

该研究表明,利用置信度预测框架(适形预测)与深度学习架构(Yolo v5)相结合,可以获得监测落叶松病虫害森林健康状况的成功预测模型。置信度预测器框架可以预测用于开发模型的当前疾病类型,还可以提供新的、未见过的疾病类型或程度的指示。同时,还为模型的用户提供了可靠的预测,并为模型建立了一个完善的适用领域,在这个领域中,可以或不可以期望这种可靠的预测。此外,该框架优雅地处理类不平衡,没有显式的过采样或欠采样或类别加权,这在高度不平衡的数据集的情况下可能至关重要。目前的方法还指出,在用户根据模型预测作出后续决定所需的准确性(可靠性)水平上,何时作为模型输入提供的信息不足。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Larch Casebearer damage with confidence using Yolo network models and conformal prediction
This investigation shows that successful forecasting models for monitoring forest health status with respect to Larch Casebearer damages can be derived using a combination of a confidence predictor framework (Conformal Prediction) in combination with a deep learning architecture (Yolo v5). A confidence predictor framework can predict the current types of diseases used to develop the model and also provide indication of new, unseen, types or degrees of disease. The user of the models is also, at the same time, provided with reliable predictions and a well-established applicability domain for the model where such reliable predictions can and cannot be expected. Furthermore, the framework gracefully handles class imbalances without explicit over- or under-sampling or category weighting which may be of crucial importance in cases of highly imbalanced datasets. The present approach also provides indication of when insufficient information has been provided as input to the model at the level of accuracy (reliability) need by the user to make subsequent decisions based on the model predictions.
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来源期刊
Remote Sensing Letters
Remote Sensing Letters REMOTE SENSING-IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
CiteScore
4.10
自引率
4.30%
发文量
92
审稿时长
6-12 weeks
期刊介绍: Remote Sensing Letters is a peer-reviewed international journal committed to the rapid publication of articles advancing the science and technology of remote sensing as well as its applications. The journal originates from a successful section, of the same name, contained in the International Journal of Remote Sensing from 1983 –2009. Articles may address any aspect of remote sensing of relevance to the journal’s readership, including – but not limited to – developments in sensor technology, advances in image processing and Earth-orientated applications, whether terrestrial, oceanic or atmospheric. Articles should make a positive impact on the subject by either contributing new and original information or through provision of theoretical, methodological or commentary material that acts to strengthen the subject.
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