CVJun 29, 2018

MRFusion: A Deep Learning architecture to fuse PAN and MS imagery for land cover mapping

arXiv:1806.11452v11 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of efficiently fusing heterogeneous remote sensing data for land cover mapping, which is crucial for agricultural, ecological, and socioeconomic applications, though it appears incremental as it builds on existing data fusion techniques.

The paper tackles the problem of land cover mapping from Very High Spatial Resolution (VHSR) images by proposing MRFusion, a deep learning architecture that directly classifies PAN and MS imagery without prior pansharpening or resampling, achieving results that avoid information loss and leverage complementarity in two real-world scenarios.

Nowadays, Earth Observation systems provide a multitude of heterogeneous remote sensing data. How to manage such richness leveraging its complementarity is a crucial chal- lenge in modern remote sensing analysis. Data Fusion techniques deal with this point proposing method to combine and exploit complementarity among the different data sensors. Considering optical Very High Spatial Resolution (VHSR) images, satellites obtain both Multi Spectral (MS) and panchro- matic (PAN) images at different spatial resolution. VHSR images are extensively exploited to produce land cover maps to deal with agricultural, ecological, and socioeconomic issues as well as assessing ecosystem status, monitoring biodiversity and provid- ing inputs to conceive food risk monitoring systems. Common techniques to produce land cover maps from such VHSR images typically opt for a prior pansharpening of the multi-resolution source for a full resolution processing. Here, we propose a new deep learning architecture to jointly use PAN and MS imagery for a direct classification without any prior image fusion or resampling process. By managing the spectral information at its native spatial resolution, our method, named MRFusion, aims at avoiding the possible infor- mation loss induced by pansharpening or any other hand-crafted preprocessing. Moreover, the proposed architecture is suitably designed to learn non-linear transformations of the sources with the explicit aim of taking as much as possible advantage of the complementarity of PAN and MS imagery. Experiments are carried out on two-real world scenarios depicting large areas with different land cover characteristics. The characteristics of the proposed scenarios underline the applicability and the generality of our method in operational settings.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes