Deep learning methods have been successfully applied to remote sensing problems for several years. Among these methods, CNN based models have high accuracy in solving the land classification problem using satellite or aerial images. Although these models have high accuracy, this generally comes with large memory size requirements. On the other hand, it is desirable to have small-sized models for applications, such as the ones implemented on unmanned aerial vehicles, with low memory space. Unfortunately, small-sized CNN models do not provide high accuracy as with their large-sized versions. In this study, we propose a novel method to improve the accuracy of CNN models, especially the ones with small size, by injecting traditional features to them. To test the effectiveness of the proposed method, we applied it to the CNN models SqueezeNet, MobileNetV2, ShuffleNetV2, VGG16, and ResNet50V2 having size 0.5 MB to 528 MB. We used the sample mean, gray level co-occurrence matrix features, Hu moments, local binary patterns, histogram of oriented gradients, and color invariants as traditional features for injection. We tested the proposed method on the EuroSAT dataset to perform land classification. Our experimental results show that the proposed method significantly improves the land classification accuracy especially when applied to small-sized CNN models.
翻译:多年来,在遥感问题上成功地采用了深层次的学习方法。在这些方法中,有线电视新闻网的模型在用卫星或航空图像解决土地分类问题时具有很高的准确性。虽然这些模型具有很高的准确性,但通常需要大量的内存规模。另一方面,最好有小型的应用模型,如在无人驾驶飞行器上执行的、记忆空间低的深层学习方法。不幸的是,小型有线电视新闻网模型与其大型版本相比没有提供很高的准确性。在本研究中,我们提出一种新的方法,通过向这些模型注入传统特征来提高CNN模型的准确性,特别是小型型模型;为测试拟议方法的有效性,我们将其应用于CNN模型SquezeNet、MiveNetV2、ShuffleNetV2、VGG16和ResNet50V2,这些模型的大小为0.5MB至528MB。我们使用了样本平均值、灰度共生矩阵特征、Hu 片段、当地二进制模式、定向梯度直方图以及彩色作为传统的注射特征。我们测试了拟议的欧洲卫星卫星数据库数据集成型方法,以进行地面分类,以大幅改进土地分类。我们实验结果显示,以进行地面分类。