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Two-Speed Deep-Learning Ensemble for Classification of Incremental Land-Cover Satellite Image Patches

机译:用于增量地被卫星影像斑块分类的双速深度学习集成

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摘要

High-velocity data streams present a challenge to deep learning-based computer vision models due to the resources needed to retrain for new incremental data. This study presents a novel staggered training approach using an ensemble model comprising the following: (i) a resource-intensive high-accuracy vision transformer; and (ii) a fast training, but less accurate, low parameter-count convolutional neural network. The vision transformer provides a scalable and accurate base model. A convolutional neural network (CNN) quickly incorporates new data into the ensemble model. Incremental data are simulated by dividing the very large So2Sat LCZ42 satellite image dataset into four intervals. The CNN is trained every interval and the vision transformer trained every half interval. We call this combination of a complementary ensemble with staggered training a "two-speed" network. The novelty of this approach is in the use of a staggered training schedule that allows the ensemble model to efficiently incorporate new data by retraining the high-speed CNN in advance of the resource-intensive vision transformer, thereby allowing for stable continuous improvement of the ensemble. Additionally, the ensemble models for each data increment out-perform each of the component models, with best accuracy of 65% against a holdout test partition of the RGB version of the So2Sat dataset.
机译:高速数据流提出了挑战由于基于深入学习计算机视觉模型新培训所需的资源增量数据。交叉训练的方法使用了一个整体模型包括以下:(i)资源密集型的高精度视觉变压器;准确、低parameter-count卷积神经网络。可伸缩的和准确的基本模型。神经网络(CNN)迅速吸收新数据到整体模型。模拟除以很大So2Sat吗分为四个LCZ42卫星图像数据集间隔。视觉上变压器每半训练时间间隔。互补与交错训练一个合奏“双速”网络。的使用是交错训练计划吗,允许有效的整体模型通过培训高速结合新的数据CNN的资源密集型的愿景变压器,从而允许稳定持续改进的合奏。此外,每个数据的整体模型增加销售的每个组件模型,最好的65%的准确性坚持测试的RGB版本的分区So2Sat dataset .

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