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      <title>超越“完美数据”：TESSERA如何重构全球地表观测的AI范式</title>
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      <description>TESSERA通过创新的自监督学习范式，证明了AI模型无需强行规整数据即可从复杂的原始遥感信号中学习。这一突破不仅极大地提升了遥感分析的鲁棒性和效率，也预示着对地观测领域正从单纯的“数据清理”迈向智能化的“真实场景理解”新阶段。</description>
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