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A leading company in the mobility and security sectors is offering a master's thesis opportunity focused on developing neural compression methods for satellite imagery. This project aims to enhance existing compression techniques by integrating domain knowledge, targeting efficient data handling for high-resolution satellite images. Candidates should possess strong programming skills, knowledge of deep learning, and be pursuing a master's degree in relevant fields.
Master Thesis: Learning Global-Local Representations for Efficient Satellite Image Compression
The IABG Innovation Centre is a development incubator for the IABG’s portfolio, which includes major trends in digitization, artificial intelligence, robotics, and sensor networks in the mobility and security sectors.
In recent years, Earth observation has become an essential component of various applications such as environmental monitoring, disaster response, and urban planning. The increasing resolution and frequency of satellite imaging has led to an exponential growth in data volume, making efficient image compression crucial for storage, transmission, and processing. While traditional compression techniques have been widely used, they often compromise on image quality or introduce artifacts. On the other hand, new deep learning-based approaches have shown great potential in achieving better trade-offs between compression ratio and perceived image quality.
However, these innovative approaches are mostly tailored to standard RGB images and lack explicit validation for satellite images, which exhibit different spatial and spectral characteristics. In the context of on-board compression to reduce downlink volume, efficiency becomes a core requirement. Given the sheer size of high-resolution satellite images, patch-based processing may be beneficial. Local-only methods risk losing critical global context, which is essential for preserving large-scale spatial patterns and semantic coherence. Furthermore, modeling global patterns across local patches miti-gates redundancy and enables more compact, low-entropy representations. This project aims to develop neural compression methods for satellite imagery, with a focus on global-local representations that can jointly capture broad contextual structure and fine local detail for optimal compression rates.