Object Annotation Using Cost-Effective Active Learning

Nuh Hatipoglu, Esra Çinar, H. K. Ekenel
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引用次数: 1

Abstract

Deep learning models require large amount of training data to reach high accuracies. However, labeling large volumes of training data is a labor-intensive and time-consuming process. Active learning is an approach that seeks to maximize the performance of a model with the least possible amount of labeled data. It is of great practical importance to develop a framework by combining deep learning and active learning methods that transfer features from a small number of unlabeled training data to classifiers. With this study, we combine active learning and deep learning models, which allows for fine-tuning deep learning models with a small number of training data. We use images of shelf products belonging to the same product group with 13 classes and examine them using different deep learning classifier models. Experimental results show that we are able to achieve higher performance by annotating and using a part of the data for training compared to annotating and using the entire dataset. This way, we save from the annotations costs, and at the same time reach an improved object classification system.
使用成本效益高的主动学习的对象注释
深度学习模型需要大量的训练数据才能达到较高的准确率。然而,标记大量的训练数据是一个劳动密集型和耗时的过程。主动学习是一种寻求用尽可能少的标记数据最大化模型性能的方法。将深度学习和主动学习方法相结合,开发一个框架,将特征从少量未标记的训练数据转移到分类器中,具有重要的实际意义。在这项研究中,我们结合了主动学习和深度学习模型,这允许使用少量训练数据对深度学习模型进行微调。我们使用属于13个类别的同一产品组的货架产品图像,并使用不同的深度学习分类器模型对它们进行检查。实验结果表明,与注释和使用整个数据集相比,我们可以通过注释和使用部分数据集进行训练来获得更高的性能。这样既节省了标注成本,又达到了一种改进的对象分类系统。
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