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首页> 外文期刊>Journal of the Royal Society of New Zealand >Experiments in cross-domain few-shot learning for image classification
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Experiments in cross-domain few-shot learning for image classification

机译:用于图像分类的跨域小样本学习实验

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摘要

Cross-domain few-shot learning has many practical applications. This paper attempts to shed light on suitable configurations of feature exactors and 'shallow' classifiers in this machine learning setting. We apply ResNet-based feature extractors pretrained on two versions of the ImageNet dataset to five target domains with different degrees of similarity to ImageNet, varying the feature extractor size, the network stage at which features are extracted, and the learning algorithm applied to the extracted features. We evaluate standard teaming algorithms such as logistic regression and linear discriminant analysis, as well as variants thereof, and additionally consider the effect of normalising the feature vectors using various p-norms. We also apply multi-instance learning to improve training image utilisation. In our experiments, the cosine similarity classifier and l(2) -regularised 1-vs-rest logistic regression generally exhibit the best classification performance. We also find that algorithms such as linear discriminant analysis yield consistently higher accuracy using l(2)-normalised feature vectors. Features extracted from the penultimate stage of a ResNet-101 model, and multi-instance learning techniques, produce the highest accuracy for most target domains. Our results will inform practitioners who are considering the application of pretrained ImageNet feature extractors in cross-domain few-shot settings.
机译:跨域小样本学习有许多实际应用。本文试图阐明这种机器学习环境中特征执行程序和“浅层”分类器的合适配置。我们将基于ResNet的特征提取器应用于在两个版本的ImageNet数据集上预训练的特征提取器,这些特征提取器与ImageNet具有不同程度的相似性,从而改变了特征提取器的大小,提取特征的网络阶段以及应用于提取特征的学习算法。我们评估了标准分组算法,如逻辑回归和线性判别分析,以及它们的变体,并考虑了使用各种p范数对特征向量进行归一化的效果。我们还应用多实例学习来提高训练图像的利用率。在我们的实验中,余弦相似度分类器和 l(2) 正则化 1-vs-rest 逻辑回归通常表现出最佳的分类性能。我们还发现,线性判别分析等算法使用 l(2) 归一化特征向量始终产生更高的准确性。从 ResNet-101 模型的倒数第二阶段提取的特征和多实例学习技术为大多数目标领域提供了最高的准确性。我们的研究结果将为正在考虑在跨域小样本设置中应用预训练的 ImageNet 特征提取器的从业者提供信息。

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