Active Learning with Point Supervision for Cost-Effective Panicle Detection in Cereal Crops
Akshay L Chandra, Sai Vikas Desai, Vineeth N Balasubramanian, Seishi, Ninomiya, Wei Guo

TL;DR
This paper introduces a cost-effective active learning approach using point supervision for panicle detection in cereal crops, significantly reducing labeling effort while maintaining high detection accuracy.
Contribution
It presents a novel point supervision based active learning method tailored for cereal crop panicle detection, reducing labeling costs by over 50%.
Findings
Outperforms baseline methods in labeling efficiency.
Achieves over 55% savings in labeling time on Sorghum dataset.
Achieves over 50% savings in labeling time on Wheat dataset.
Abstract
Panicle density of cereal crops such as wheat and sorghum is one of the main components for plant breeders and agronomists in understanding the yield of their crops. To phenotype the panicle density effectively, researchers agree there is a significant need for computer vision-based object detection techniques. Especially in recent times, research in deep learning-based object detection shows promising results in various agricultural studies. However, training such systems usually requires a lot of bounding-box labeled data. Since crops vary by both environmental and genetic conditions, acquisition of huge amount of labeled image datasets for each crop is expensive and time-consuming. Thus, to catalyze the widespread usage of automatic object detection for crop phenotyping, a cost-effective method to develop such automated systems is essential. We propose a point supervision based…
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