Guo Yiqing, Jia Xiuping, Paull David
IEEE Trans Image Process. 2018 Feb 22. doi: 10.1109/TIP.2018.2808767.
The explosive availability of remote sensing images has challenged supervised classification algorithms such as Support Vector Machines (SVM), as training samples tend to be highly limited due to the expensive and laborious task of ground truthing. The temporal correlation and spectral similarity between multitemporal images have opened up an opportunity to alleviate this problem. In this study, a SVM-based Sequential Classifier Training (SCT-SVM) approach is proposed for multitemporal remote sensing image classification. The approach leverages the classifiers of previous images to reduce the required number of training samples for the classifier training of an incoming image. For each incoming image, a rough classifier is firstly predicted based on the temporal trend of a set of previous classifiers. The predicted classifier is then fine-tuned into a more accurate position with current training samples. This approach can be applied progressively to sequential image data, with only a small number of training samples being required from each image. Experiments were conducted with Sentinel-2A multitemporal data over an agricultural area in Australia. Results showed that the proposed SCT-SVM achieved better classification accuracies compared with two state-of-the-art model transfer algorithms. When training data are insufficient, the overall classification accuracy of the incoming image was improved from 76.18% to 94.02% with the proposed SCT-SVM, compared with those obtained without the assistance from previous images. These results demonstrate that the leverage of a priori information from previous images can provide advantageous assistance for later images in multitemporal image classification.
遥感图像的大量可获取性给诸如支持向量机(SVM)等监督分类算法带来了挑战,因为由于地面真值标注这项昂贵且费力的任务,训练样本往往非常有限。多时相图像之间的时间相关性和光谱相似性为缓解这一问题提供了契机。在本研究中,提出了一种基于支持向量机的序列分类器训练(SCT-SVM)方法用于多时相遥感图像分类。该方法利用先前图像的分类器来减少对输入图像进行分类器训练所需的训练样本数量。对于每一幅输入图像,首先基于一组先前分类器的时间趋势预测一个粗略的分类器。然后使用当前训练样本将预测的分类器微调至更精确的位置。这种方法可以逐步应用于序列图像数据,每幅图像仅需要少量的训练样本。使用澳大利亚一个农业地区的哨兵 - 2A 多时相数据进行了实验。结果表明,与两种最先进的模型迁移算法相比,所提出的 SCT-SVM 取得了更好的分类精度。当训练数据不足时,与没有先前图像辅助时相比,所提出的 SCT-SVM 将输入图像的总体分类精度从 76.18%提高到了 94.02%。这些结果表明,利用先前图像的先验信息可以为多时相图像分类中的后续图像提供有利的帮助。