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Few-Shot Object Detection: A Comprehensive Survey

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arxiv 2112.11699 v2 pith:WAYWXFM6 submitted 2021-12-22 cs.CV cs.LG

Few-Shot Object Detection: A Comprehensive Survey

classification cs.CV cs.LG
keywords objectdetectionfew-shotamountsapproachescategoriesconceptsdata
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Humans are able to learn to recognize new objects even from a few examples. In contrast, training deep-learning-based object detectors requires huge amounts of annotated data. To avoid the need to acquire and annotate these huge amounts of data, few-shot object detection aims to learn from few object instances of new categories in the target domain. In this survey, we provide an overview of the state of the art in few-shot object detection. We categorize approaches according to their training scheme and architectural layout. For each type of approaches, we describe the general realization as well as concepts to improve the performance on novel categories. Whenever appropriate, we give short takeaways regarding these concepts in order to highlight the best ideas. Eventually, we introduce commonly used datasets and their evaluation protocols and analyze reported benchmark results. As a result, we emphasize common challenges in evaluation and identify the most promising current trends in this emerging field of few-shot object detection.

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  1. DetPO: In-Context Learning with Multi-Modal LLMs for Few-Shot Object Detection

    cs.CV 2026-03 conditional novelty 6.0

    Detection Prompt Optimization (DetPO) improves few-shot object detection with black-box MLLMs by iteratively refining text prompts from TP/FP/FN errors on few-shot examples, gaining up to 9.7 mAP over prior black-box methods.