Active Learning for Image Classification: A Comprehensive Analysis in Agriculture

Flores; C.A.; Valenzuela; A.I.; Verschae; R.

Keywords: Active learning; Agriculture; Convolutional neural networks; Explainable artificial intelligence

Abstract

Precision agriculture allows for the sustainable improvement of agricultural products by introducing technologies that provide crop-specific data, which supervised algorithms can process. However, supervised algorithms require expert-labeled data, which can be highly expensive in agricultural applications. Given this problem, active learning (AL) arises as an alternative to reduce the need to annotate training examples manually. This paper analyzes the use of AL in classifying agricultural crop images. To evaluate AL, two datasets with information on fruit and vegetable images were used on two neural network-based algorithms. The classification results indicate that AL reduced the number of training examples to achieve a given performance. Additionally, the pseudo-labels of the supervised algorithms, a stopping criterion, and the explainability of the predictions were analyzed. These analyses allowed to assess the applicability of AL in agriculture to understand the learning process of the supervised algorithms. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024.

Más información

Título según WOS: Active Learning for Image Classification: A Comprehensive Analysis in Agriculture
Título según SCOPUS: Active Learning for Image Classification: A Comprehensive Analysis in Agriculture
Título de la Revista: Lecture Notes in Networks and Systems
Editorial: Springer Science and Business Media Deutschland GmbH
Fecha de publicación: 2024
Página de inicio: 607
Página final: 616
Idioma: English
DOI:

10.1007/978-981-97-5441-0_49

Notas: ISI, SCOPUS