Densenet 169-Based Plant Disease Detection of PlantVillage Dataset

Read the full article See related articles

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Using the PlantVillage dataset and a DenseNet-169-based spatial attention module, this article introducesa unique method for plant disease diagnosis. Because plant diseases can have a major influence onagricultural productivity, prompt intervention depends on precise identification.The intricacies and variances found in plant disease photos are frequently too much for conventionaltechniques to handle. We use DenseNet-169's strong feature extraction capabilities and supplement themwith a spatial attention module that highlights the most pertinent areas of the images in order to overcomethese difficulties. Additionally, we use fine-tuning methods to maximize our model's performance. Byfine-tuning, the DenseNet-169 architecture may better adjust to the unique features of the PlantVillagedataset, increasing its accuracy and resilience. When paired with spatial attention and fine-tuning,DenseNet-169 performs better than baseline models, attaining higher classification accuracy across arange of plant illnesses. Our results demonstrate how well DenseNet-169 may be integrated withfine-tuning and spatial attention processes for the diagnosis of plant diseases. This approach has thepotential to significantly improve crop management and yield by increasing detection accuracy andfostering more automated and dependable agricultural operations.

Article activity feed