This paper studies the problem of training a semantic segmentation neural network with weak annotations, in order to be applied in aerial vegetation images from Teide National Park. It proposes a Deep Seeded Region Growing system which consists on training a semantic segmentation network from a set of seeds generated by a Support Vector Machine. A region growing algorithm module is applied to the seeds to progressively increase the pixel-level supervision. The proposed method performs better than an SVM, which is one of the most popular segmentation tools in remote sensing image applications.
He ChenMingyue DongRong LuoXianwei ZhengJun LiJianya Gong
Zheng ChenYuheng LianJing BaiJingsen ZhangZhu XiaoBiao Hou
Xiao Lian LüZhiguo JiangHaopeng Zhang
Zaiyi HuJunyu GaoYuan YuanXuelong Li
Yuxing HuangQiu ShenYing FuShaodi You