4.7 Article

Toward Sustainability: Trade-Off Between Data Quality and Quantity in Crop Pest Recognition

期刊

FRONTIERS IN PLANT SCIENCE
卷 12, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fpls.2021.811241

关键词

feature engineering; classification; redundancy; low-shot; few-shot

资金

  1. National Natural Science Foundation of China [32101612]
  2. Major Science and Technology Projects of Xinjiang Production and Construction Corps [2021AA006]

向作者/读者索取更多资源

In the field of intelligent plant protection, the method of embedding range judgment can achieve the same recognition performance as all data with a small amount of high-quality data, and limited good data can outperform a large amount of bad data.
The crop pest recognition based on the convolutional neural networks is meaningful and important for the development of intelligent plant protection. However, the current main implementation method is deep learning, which relies heavily on large amounts of data. As known, current big data-driven deep learning is a non-sustainable learning mode with the high cost of data collection, high cost of high-end hardware, and high consumption of power resources. Thus, toward sustainability, we should seriously consider the trade-off between data quality and quantity. In this study, we proposed an embedding range judgment (ERJ) method in the feature space and carried out many comparative experiments. The results showed that, in some recognition tasks, the selected good data with less quantity can reach the same performance with all training data. Furthermore, the limited good data can beat a lot of bad data, and their contrasts are remarkable. Overall, this study lays a foundation for data information analysis in smart agriculture, inspires the subsequent works in the related areas of pattern recognition, and calls for the community to pay more attention to the essential issue of data quality and quantity.

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