论文标题
完全卷积变更检测框架具有生成对抗网络,用于无监督,弱监督和区域监督的变更检测
Fully Convolutional Change Detection Framework with Generative Adversarial Network for Unsupervised, Weakly Supervised and Regional Supervised Change Detection
论文作者
论文摘要
对变更检测的深度学习是遥感领域当前的热门话题之一。但是,大多数端到端网络都是用于监督变更检测的,而无监督的变更检测模型取决于传统的检测前方法。因此,我们提出了一个具有生成对抗网络的完全卷积变更检测框架,以结束无监督,弱监督,区域监督和完全监督的变更检测任务,以分为一个框架。基本的UNET段用于获得更改检测图,实现了图像到图像发生器来对多周期图像之间的频谱和空间变化进行建模,并且提出了一个用于更改和不变的歧视器,以建模弱和区域监督的变更检测任务的语义变化。分段和发电机的迭代优化可以构建一个端到端网络,以进行无监督的变更检测,分段器和歧视器之间的对抗过程可以为弱和区域监督的变更检测提供解决方案,可以对分段本身进行培训,以进行完全监督的任务。实验表明,支撑框架在无监督,弱监督和区域监督的变更检测中的有效性。本文为无监督,弱监督和区域监督的变更检测任务提供了理论定义,并显示了探索端到端网络的巨大潜力,用于遥感变更检测。
Deep learning for change detection is one of the current hot topics in the field of remote sensing. However, most end-to-end networks are proposed for supervised change detection, and unsupervised change detection models depend on traditional pre-detection methods. Therefore, we proposed a fully convolutional change detection framework with generative adversarial network, to conclude unsupervised, weakly supervised, regional supervised, and fully supervised change detection tasks into one framework. A basic Unet segmentor is used to obtain change detection map, an image-to-image generator is implemented to model the spectral and spatial variation between multi-temporal images, and a discriminator for changed and unchanged is proposed for modeling the semantic changes in weakly and regional supervised change detection task. The iterative optimization of segmentor and generator can build an end-to-end network for unsupervised change detection, the adversarial process between segmentor and discriminator can provide the solutions for weakly and regional supervised change detection, the segmentor itself can be trained for fully supervised task. The experiments indicate the effectiveness of the propsed framework in unsupervised, weakly supervised and regional supervised change detection. This paper provides theorical definitions for unsupervised, weakly supervised and regional supervised change detection tasks, and shows great potentials in exploring end-to-end network for remote sensing change detection.