2022
DOI: 10.1007/978-3-031-19821-2_12
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Coarse-To-Fine Incremental Few-Shot Learning

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Cited by 11 publications
(1 citation statement)
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“…Figure 1, where some pixels are relevant both for deforestation and roadwork). Ni et al [31] explore the coarse-to-fine fewshot setting under the name cross-granularity few-shot with a medical application in mind, Xiang et al [32] develop an incremental variant and, concurrently to the present work, Gong et al [33] investigate taxonomy adaptive cross-domain semantic segmentation (e.g., also incorporating subclasses of known classes) also with only a few labeled shots. To the best of our knowledge however, this is the first work exploring similar ideas specifically adapted to the context of change detection.…”
Section: B Specialization and Subcategorization In Computer Visionmentioning
confidence: 99%
“…Figure 1, where some pixels are relevant both for deforestation and roadwork). Ni et al [31] explore the coarse-to-fine fewshot setting under the name cross-granularity few-shot with a medical application in mind, Xiang et al [32] develop an incremental variant and, concurrently to the present work, Gong et al [33] investigate taxonomy adaptive cross-domain semantic segmentation (e.g., also incorporating subclasses of known classes) also with only a few labeled shots. To the best of our knowledge however, this is the first work exploring similar ideas specifically adapted to the context of change detection.…”
Section: B Specialization and Subcategorization In Computer Visionmentioning
confidence: 99%