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arxiv: 1706.03424 · v2 · submitted 2017-06-11 · 💻 cs.CV

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PatternNet: A Benchmark Dataset for Performance Evaluation of Remote Sensing Image Retrieval

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classification 💻 cs.CV
keywords rsirremoteretrievalsensingbenchmarkpatternnetcollecteddata
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Remote sensing image retrieval(RSIR), which aims to efficiently retrieve data of interest from large collections of remote sensing data, is a fundamental task in remote sensing. Over the past several decades, there has been significant effort to extract powerful feature representations for this task since the retrieval performance depends on the representative strength of the features. Benchmark datasets are also critical for developing, evaluating, and comparing RSIR approaches. Current benchmark datasets are deficient in that 1) they were originally collected for land use/land cover classification and not image retrieval, 2) they are relatively small in terms of the number of classes as well the number of sample images per class, and 3) the retrieval performance has saturated. These limitations have severely restricted the development of novel feature representations for RSIR, particularly the recent deep-learning based features which require large amounts of training data. We therefore present in this paper, a new large-scale remote sensing dataset termed "PatternNet" that was collected specifically for RSIR. PatternNet was collected from high-resolution imagery and contains 38 classes with 800 images per class. We also provide a thorough review of RSIR approaches ranging from traditional handcrafted feature based methods to recent deep learning based ones. We evaluate over 35 methods to establish extensive baseline results for future RSIR research using the PatternNet benchmark.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. ArcGate: Adaptive Arctangent Gated Activation

    cs.CV 2026-05 unverdicted novelty 5.0

    ArcGate is an adaptive activation with seven learnable parameters that outperforms ReLU and other fixed activations on remote sensing benchmarks, reaching 99.67% accuracy on PatternNet and showing strong noise resilience.