Large-area crop classification using multi-spectral imagery is a widely studied problem for several decades and is generally addressed using classical Random Forest classifier. Recently, deep convolutional neural networks (DCNN) have been proposed. However, these methods only achieved results comparable with Random Forest. In this work, we present a novel CNN based architecture for large-area crop classification. Our methodology combines both spatio-temporal analysis via 3D CNN as well as temporal analysis via 1D CNN. We evaluated the efficacy of our approach on Yolo and Imperial county benchmark datasets. Our combined strategy outperforms both classical as well as recent DCNN based methods in terms of classification accuracy by 2% while maintaining a minimum number of parameters and the lowest inference time.
翻译:使用多光谱图像的大型作物分类是几十年来广泛研究的一个问题,一般使用古典随机森林分类器来处理。最近,提出了深层进化神经网络(DCNN)的建议,但是,这些方法只取得了与随机森林相似的结果。在这项工作中,我们提出了一个基于CNN的大型作物分类新颖结构。我们的方法将3DCNN的时空分析与1DCNN的时空分析结合起来。我们评估了我们关于Yolo和帝国县基准数据集的方法的有效性。我们的综合战略在分类精确度方面优于传统和最近的DCNNN方法,同时保持最低参数数和最低推论时间。