Dataset Bias in Few-shot Image Recognition
Shuqiang Jiang, Yaohui Zhu, Chenlong Liu, Xinhang Song, Xiangyang Li,, and Weiqing Min

TL;DR
This paper investigates how dataset bias affects the transferability of knowledge in few-shot image recognition, analyzing factors like category relevance, instance density, and dataset structure to improve understanding and performance.
Contribution
It introduces a comprehensive analysis of dataset bias in FSIR, exploring how dataset characteristics influence transferability and model performance across different datasets and methods.
Findings
Transferability is higher with relevant base categories.
Dense instances and diverse categories improve knowledge transfer.
Dataset structure significantly impacts few-shot learning performance.
Abstract
The goal of few-shot image recognition (FSIR) is to identify novel categories with a small number of annotated samples by exploiting transferable knowledge from training data (base categories). Most current studies assume that the transferable knowledge can be well used to identify novel categories. However, such transferable capability may be impacted by the dataset bias, and this problem has rarely been investigated before. Besides, most of few-shot learning methods are biased to different datasets, which is also an important issue that needs to be investigated deeply. In this paper, we first investigate the impact of transferable capabilities learned from base categories. Specifically, we use the relevance to measure relationships between base categories and novel categories. Distributions of base categories are depicted via the instance density and category diversity. The FSIR model…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Sparse and Compressive Sensing Techniques
