Plant Disease Detection from Image Using CNN

Abstract

The increasing threat of plant diseases poses a significant challenge to global food security. Rapid and accurate identification of plant diseases is crucial for effective disease management and prevention. In recent years, deep learning techniques have shown great promise in automating the process of plant disease identification through image analysis. This report presents a comprehensive study on image-based plant disease classification using deep learning techniques. The report begins by providing an overview of plant diseases and their impact on agriculture. It discusses the limitations of traditional disease identification methods and highlights the potential of deep learning algorithms in revolutionizing the field. The importance of image-based approaches is emphasized due to their non-destructive and scalable nature. Next, the report delves into the methodology of deep learning for plant disease classification. It explores various architectures such as convolutional neural networks (CNNs) and their variants, including transfer learning and ensemble methods. The training process, data augmentation techniques, and hyperparameter tuning are discussed in detail.

Authors and Affiliations

Kushal Kumar, Khushboo Tripathi, and Rashmi Gupta

Keywords

Related Articles

Analyzing The Performance of Environmental Friendly Concrete That Contains Acid-Treated (H2SO4, H3PO4) Recycled Aggregate

Its poor quality was one of the key problems preventing recycled course aggregate (RCA) from being used in concrete mixes. The quality of recycled aggregate may be impacted by cement mortar on the surface of the material...

Design And Development of Sketch Based Image Retrieval Using Deep Learning

In this cutting edge, the common wrong doing rate is expanding day-by-day and to manage up with this the criminal divisions as well ought to discover ways in which would speed up the by and large preparation and offer as...

Mutual Coupling Reduction Using 8x8 MIMO Antenna for MM Wave Applications

A 8x8 multiple input multiple output antenna is developed for the applications of MM wave. this proposed model has 8 ports on the single structure of antenna system. The proposed design gives a triple bands k-band (14.6...

Knowledge Representation for Legal Document Summarization

This paper presents a novel approach for legal document summarization. Proposed approach is based on Ripple-Down Rules (RDR). It is an incremental knowledge acquisition method. RDR allows us to quickly build an extendabl...

Revitalizing Infrastructure: Assessing Concrete Jacketing for Reinforced Concrete Column Rehabilitation

The rehabilitation of deteriorating civil engineering infrastructure, encompassing bridges, buildings, columns, beams, supporting beams, marine structures, and roads, presents a formidable challenge in contemporary engin...

Download PDF file
  • EP ID EP745060
  • DOI 10.55524/ijircst.2023.11.4.5
  • Views 1
  • Downloads 0

How To Cite

Kushal Kumar, Khushboo Tripathi, and Rashmi Gupta (2023). Plant Disease Detection from Image Using CNN. International Journal of Innovative Research in Computer Science and Technology, 11(4), -. https://europub.co.uk/articles/-A-745060