4.7 Article

Seeding Crop Detection Framework Using Prototypical Network Method in UAV Images

Journal

AGRICULTURE-BASEL
Volume 12, Issue 1, Pages -

Publisher

MDPI
DOI: 10.3390/agriculture12010026

Keywords

chili detection; prototypical network; small-scale similarity problem; unmanned aerial vehicle images

Categories

Funding

  1. National Natural Science Foundation of China [61973036]
  2. Yunnan Applied Basic Research Project of China [201701CF00037]
  3. Guangdong Province Science and Technology Innovation Strategy Special Fund Project [skjtdzxrwqd2018001]
  4. Yunnan Provincial Science and Technology Department Key Research Program, China (Engineering) [2018BA070]

Ask authors/readers for more resources

This paper proposes a detection framework for locating chili seedling crops in large-field UAV images based on few-shot learning. By slicing crop images into subcategories and using a prototypical network, the method overcomes the difficulties of locating similar objects on a small scale. The detection process utilizes a clustering superpixel segmentation method to generate candidate regions and a prototypical network for recognizing patch images. Experimental results show a location accuracy of 96.46% for chili seedling crops.
With the development of unmanned aerial vehicle (UAV), obtaining high-resolution aerial images has become easier. Identifying and locating specific crops from aerial images is a valuable task. The location and quantity of crops are important for agricultural insurance businesses. In this paper, the problem of locating chili seedling crops in large-field UAV images is processed. Two problems are encountered in the location process: a small number of samples and objects in UAV images are similar on a small scale, which increases the location difficulty. A detection framework based on a prototypical network to detect crops in UAV aerial images is proposed. In particular, a method of subcategory slicing is applied to solve the problem, in which objects in aerial images have similarities at a smaller scale. The detection framework is divided into two parts: training and detection. In the training process, crop images are sliced into subcategories, and then these subcategory patch images and background category images are used to train the prototype network. In the detection process, a simple linear iterative clustering superpixel segmentation method is used to generate candidate regions in the UAV image. The location method uses a prototypical network to recognize nine patch images extracted simultaneously. To train and evaluate the proposed method, we construct an evaluation dataset by collecting the images of chilies in a seedling stage by an UAV. We achieve a location accuracy of 96.46%. This study proposes a seedling crop detection framework based on few-shot learning that does not require the use of labeled boxes. It reduces the workload of manual annotation and meets the location needs of seedling crops.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available