Publication: Images and CNN applications in smart agriculture
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Informa UK Limited
Abstract
In recent years, the agricultural sector has undergone a revolutionary shift toward “smart farming”,
integrating advanced technologies to strengthen crop health and productivity significantly.
This paradigm shift holds profound implications for food safety and the broader economy. At the
forefront of this transformation is deep learning, a subset of artificial intelligence based on
artificial neural networks, which emerged as a powerful tool in detection and classification
tasks. Specifically, Convolutional Neural Networks (CNNs), a specialized type of deep learning
and computer vision models, demonstrated remarkable proficiency in analyzing crop imagery,
whether sourced from satellites, aircraft, or terrestrial cameras. These networks often leverage
vegetation indices and multispectral imagery to enhance their analytical capabilities. Such
models contribute to the development of systems that could enhance agricultural outcomes.
This review encapsulates the current state of the art in using CNNs in agriculture. It details the
image types utilized within this context, including, but not limited to, multispectral images and
vegetation indices. Furthermore, it catalogs accessible online datasets pertinent to this field.
Collectively, this paper underscores the pivotal role of CNNs in agriculture and highlights the
transformative impact of multispectral images in this rapidly evolving domain.
