How Useful Is Image-Based Active Learning for Plant Organ Segmentation?

Author:

Rawat Shivangana1ORCID,Chandra Akshay L.2ORCID,Desai Sai Vikas1ORCID,Balasubramanian Vineeth N.1ORCID,Ninomiya Seishi3ORCID,Guo Wei3ORCID

Affiliation:

1. Department of Computer Science and Engineering, Indian Institute of Technology, Hyderabad, India

2. Department of Computer Science, University of Freiburg, Germany

3. Graduate School of Agricultural and Life Sciences, The University of Tokyo, Japan

Abstract

Training deep learning models typically requires a huge amount of labeled data which is expensive to acquire, especially in dense prediction tasks such as semantic segmentation. Moreover, plant phenotyping datasets pose additional challenges of heavy occlusion and varied lighting conditions which makes annotations more time-consuming to obtain. Active learning helps in reducing the annotation cost by selecting samples for labeling which are most informative to the model, thus improving model performance with fewer annotations. Active learning for semantic segmentation has been well studied on datasets such as PASCAL VOC and Cityscapes. However, its effectiveness on plant datasets has not received much importance. To bridge this gap, we empirically study and benchmark the effectiveness of four uncertainty-based active learning strategies on three natural plant organ segmentation datasets. We also study their behaviour in response to variations in training configurations in terms of augmentations used, the scale of training images, active learning batch sizes, and train-validation set splits.

Funder

Japan Science and Technology Agency

Publisher

American Association for the Advancement of Science (AAAS)

Subject

Agronomy and Crop Science

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