Abstract

Recognizing plant diseases is a major challenge in agriculture, and recent works based on deep learning have shown high efficiency in addressing problems directly related to this area. Nonetheless, weak performance has been observed when a model trained on a particular dataset is evaluated in new greenhouse environments. Therefore, in this work, we take a step towards these issues and present a strategy to improve model accuracy by applying techniques that can help refine the model’s generalization capability to deal with complex changes in new greenhouse environments. We propose a paradigm called “control to target classes.” The core of our approach is to train and validate a deep learning-based detector using target and control classes on images collected in various greenhouses. Then, we apply the generated features for testing the inference of the system on data from new greenhouse conditions where the goal is to detect target classes exclusively. Therefore, by having explicit control over inter- and intra-class variations, our model can distinguish data variations that make the system more robust when applied to new scenarios. Experiments demonstrate the effectiveness and efficiency of the proposed approach on our extended tomato plant diseases dataset with 14 classes, from which 5 are target classes and the rest are control classes. Our detector achieves a recognition rate of target classes of 93.37% mean average precision on the inference dataset. Finally, we believe that our study offers valuable guidelines for researchers working in plant disease recognition with complex input data.

Highlights

  • – We propose and explore a paradigm called “control to target classes” to improve the performance of our deep learningbased detector to deal with changes of new greenhouse conditions using target and control classes

  • To measure the model’s capacity to deal with features of target classes, we further evaluate the trained model on the inference dataset using the best model of Table 3

  • We proposed a new paradigm called “control to target classes” to refine the generalization capacity of plant disease recognition based on deep learning

Read more

Summary

Introduction

Plant diseases and physiological disorders concern farmers and researchers as it directly impacts food security and, human well-being (Stewart and Roberts, 2012). Quantifying the impact of plant diseases on crops represents one of the most challenging problems in agriculture (Food and Agriculture Organization, 2006). Plant Diseases Recognition With Control Classes to understand the complexity of plants and their interactions with factors that cause plant anomalies. This task is often considered time-consuming, laborious, and prone to error since it involves human knowledge (Barbedo, 2018a). Earlier and automatic identification of plant diseases is required to support human labor as an efficient tool to monitor plants. TYLCV Canker Leaf mold Gray mold Powdery mildew Total No images

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call