论文标题

使用深层竞争网络从大型多传感器数据中提取强大的建筑足迹

Robust building footprint extraction from big multi-sensor data using deep competition network

论文作者

Khoshboresh-Masouleh, Mehdi, Saradjian, Mohammad R.

论文摘要

从多传感器数据(例如光学图像和光检测和范围(LIDAR)点云)中构建占地面积提取(BFE)广泛用于遥感应用的各个领域。但是,由于从多传感器数据中的各种复杂场景中采用相对效率低下的建筑提取技术,因此仍然具有挑战性的研究主题。在这项研究中,我们开发和评估了一个深度竞争网络(DCN),该网络将非常高的空间分辨率光学遥感图像与鲁塔数据融合在一起,以构成强大的BFE。 DCN是使用带有分类结构的编码器矢量量化的深层卷积卷积编码器架构。 DCN由五个编码块组成,具有卷积权重,用于稳健的二进制表示(Superpixel)学习。 DCN经过了从美国印第安纳州获得的具有多个建筑场景的大型多传感器数据集进行培训和测试。准确度评估的比较结果表明,与其他深层语义二进制分割体系结构相比,DCN具有竞争性BFE性能。因此,我们得出的结论是,提出的模型是从大型多传感器数据中鲁棒BFE的合适解决方案。

Building footprint extraction (BFE) from multi-sensor data such as optical images and light detection and ranging (LiDAR) point clouds is widely used in various fields of remote sensing applications. However, it is still challenging research topic due to relatively inefficient building extraction techniques from variety of complex scenes in multi-sensor data. In this study, we develop and evaluate a deep competition network (DCN) that fuses very high spatial resolution optical remote sensing images with LiDAR data for robust BFE. DCN is a deep superpixelwise convolutional encoder-decoder architecture using the encoder vector quantization with classified structure. DCN consists of five encoding-decoding blocks with convolutional weights for robust binary representation (superpixel) learning. DCN is trained and tested in a big multi-sensor dataset obtained from the state of Indiana in the United States with multiple building scenes. Comparison results of the accuracy assessment showed that DCN has competitive BFE performance in comparison with other deep semantic binary segmentation architectures. Therefore, we conclude that the proposed model is a suitable solution to the robust BFE from big multi-sensor data.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源