The rapid growth of data from satellite-based Earth observation (EO) systems poses significant challenges in data transmission and storage. We evaluate the potential of task-specific learned compression algorithms in this context to reduce data volumes while retaining crucial information. In detail, we compare traditional compression (JPEG 2000) versus a learned compression approach (Discretized Mixed Gaussian Likelihood) on three EO segmentation tasks: Fire, cloud, and building detection. Learned compression notably outperforms JPEG 2000 for large-scale, multi-channel optical imagery in both reconstruction quality (PSNR) and segmentation accuracy. However, traditional codecs remain competitive on smaller, single-channel thermal infrared datasets due to limited data and architectural constraints. Additionally, joint end-to-end optimization of compression and segmentation models does not improve performance over standalone optimization.
翻译:卫星地球观测系统数据的快速增长给数据传输与存储带来了重大挑战。本文评估了在此背景下,任务特定的学习型压缩算法在减少数据量同时保留关键信息的潜力。具体而言,我们在三个地球观测分割任务(火灾检测、云层检测和建筑物检测)上比较了传统压缩方法(JPEG 2000)与学习型压缩方法(离散混合高斯似然模型)的性能。对于大规模多通道光学影像,学习型压缩在重建质量(峰值信噪比)和分割精度方面均显著优于JPEG 2000。然而,由于数据量有限和架构约束,传统编解码器在小型单通道热红外数据集上仍具有竞争力。此外,压缩模型与分割模型的联合端到端优化并未表现出优于独立优化方案的性能提升。