A Zero-Shot Sketch-Based Intermodal Object Retrieval Scheme for Remote Sensing Images

IEEE GEOSCIENCE AND REMOTE SENSING LETTERS(2022)

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摘要
Domain-agnostic data retrieval has lately become essential amidst the availability of large-scale data from different types of sensors. However, the unavailability of a sufficient amount of samples of certain classes during training curtails the utility of existing retrieval models in remote sensing (RS) applications. Here, we propose a novel framework for zero-shot intermodal data retrieval of RS data. Thereupon, we design an encoder-decoder structure that ensures enhanced overlapping among the two data domains utilizing cross-triplet and cross-projection loss functions. Furthermore, we propose a sketch-based representation of the RS database Earth on Canvas with diverse classes. We perform a thorough benchmarking of this data set and demonstrate that the proposed framework outperforms state-of-the-art methods for zero-shot sketch-based retrieval framework for RS data.
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关键词
Semantics, Training, Visualization, Task analysis, Standards, Sensors, Satellites, Cross-modal retrieval, database, earth on canvas (EoC), information retrieval, remote sensing (RS), sketches, zero-shot
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