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Active Learning Plus Deep Learning Can Establish Cost-Effective and Robust Model for Multichannel Image: A Case on Hyperspectral Image Classification

机译:主动学习加深度学习可以为多通道图像建立成本效益和强大的模型:一个关于高光谱图像分类的案例

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摘要

Relying on large scale labeled datasets, deep learning has achieved good performance in image classification tasks. In agricultural and biological engineering, image annotation is time-consuming and expensive. It also requires annotators to have technical skills in specific areas. Obtaining the ground truth is difficult because natural images are expensive. In addition, images in these areas are usually stored as multichannel images, such as computed tomography (CT) images, magnetic resonance images (MRI), and hyperspectral images (HSI). In this paper, we present a framework using active learning and deep learning for multichannel image classification. We use three active learning algorithms, including least confidence, margin sampling, and entropy, as the selection criteria. Based on this framework, we further introduce an “image pool” to make full advantage of images generated by data augmentation. To prove the availability of the proposed framework, we present a case study on agricultural hyperspectral image classification. The results show that the proposed framework achieves better performance compared with the deep learning model. Manual annotation of all the training sets achieves an encouraging accuracy. In comparison, using active learning algorithm of entropy and image pool achieves a similar accuracy with only part of the whole training set manually annotated. In practical application, the proposed framework can remarkably reduce labeling effort during the model development and upadting processes, and can be applied to multichannel image classification in agricultural and biological engineering.
机译:依靠大规模标记的数据集,深度学习在图像分类任务中取得了良好的性能。在农业和生物工程中,图像注释是耗时和昂贵的。它还需要注释器在特定领域具有技术技能。获得地面真理很难,因为自然图像昂贵。另外,这些区域中的图像通常存储为多通道图像,例如计算机断层摄影(CT)图像,磁共振图像(MRI)和高光谱图像(HSI)。在本文中,我们向多通道图像分类提供了一种使用主动学习和深度学习的框架。我们使用三个主动学习算法,包括最不置信度,边距采样和熵作为选择标准。基于此框架,我们进一步引入了“图像池”,以充分利用数据增强生成的图像。为了证明拟议的框架的可用性,我们展示了对农业高光谱图像分类的案例研究。结果表明,与深层学习模型相比,该框架的框架达到了更好的性能。手动注释所有培训集实现了令人鼓舞的准确性。相比之下,利用熵和图像池的主动学习算法实现了类似的准确性,只有一部分整个训练设置手动注释。在实际应用中,所提出的框架可以在模型开发和上调过程中显着降低标签工作,并且可以应用于农业和生物工程中的多通道图像分类。

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