目标检测
计算机科学
元学习(计算机科学)
水准点(测量)
人工智能
微调
帕斯卡(单位)
单发
机器学习
参数统计
光学(聚焦)
模式识别(心理学)
任务(项目管理)
数学
工程类
大地测量学
物理
光学
程序设计语言
系统工程
地理
统计
量子力学
作者
Berkan Demirel,Orhun Buğra Baran,Ramazan Gökberk Cinbiş
标识
DOI:10.1109/cvpr52729.2023.00709
摘要
Few-shot object detection, the problem of modelling novel object detection categories with few training instances, is an emerging topic in the area of few-shot learning and object detection. Contemporary techniques can be divided into two groups: fine-tuning based and meta-learning based approaches. While meta-learning approaches aim to learn dedicated meta-models for mapping samples to novel class models, fine-tuning approaches tackle few-shot detection in a simpler manner, by adapting the detection model to novel classes through gradient based optimization. Despite their simplicity, fine-tuning based approaches typically yield competitive detection results. Based on this observation, we focus on the role of loss functions and augmentations as the force driving the fine-tuning process, and propose to tune their dynamics through meta-learning principles. The proposed training scheme, therefore, allows learning inductive biases that can boost few-shot detection, while keeping the advantages of fine-tuning based approaches. In addition, the proposed approach yields interpretable loss functions, as opposed to highly parametric and complex few-shot meta-models. The experimental results highlight the merits of the proposed scheme, with significant improvements over the strong fine-tuning based few-shot detection baselines on benchmark Pascal VOC and MS-COCO datasets, in terms of both standard and generalized few-shot performance metrics.
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