A Novel Approach for Sensitive Crop Disease Prediction Based on Computer Vision Techniques
- Title
- A Novel Approach for Sensitive Crop Disease Prediction Based on Computer Vision Techniques
- Creator
- Patil, Manoj
- Contributor
- Manohar, M
- Description
- Agriculture is a vital sector that plays an essential role in ensuring global food security, supporting economic development, and promoting environmental sustainability. Sustainable agriculture is an essential approach that aims to address the diffculties posed by conventional farming practices and ensure the long-term viability of our food production systems. Worldwide, crop leaf diseases seriously threaten food security and agricultural production. Early and accurate detection of crop leaf diseases is essential for effective crop productivity management and food prevention. Computer vision approaches offer promising solutions for automating the identifcation and prediction of crop leaf diseases. Analyzing digital images of plant leaves enables the identifcation of disease characteristics, such as discoloration, lesions, and patterns, which are often imperceptible to the naked eye. Machine Learning (ML) algorithms, such as Convolutional Neural Networks (CNN), have been widely employed in this domain to learn from large datasets of annotated images and accurately classify leaf diseases. The process of crop leaf disease classifcation using computer vision involves several stages. Initially, highresolution images of plant leaves are acquired using cameras or mobile devices. Preprocessing techniques, including image enhancement and noise reduction, are applied to improve image quality. Subsequently, feature extraction approaches extract pertinent data from the images, including texture, shape, and color. Deep Learning (DL) models are then trained and fne-tuned using these extracted features. newlineAlthough computer vision techniques have shown effective results in the classifcation of plant diseases, however, several challenges remain. Tomatoes and Potatoes newlineare widely cultivated and consumed vegetables worldwide and are a primary economic newlinesource for many countries. These sensitive plants are prone to various diseases during newlinegrowth, leading to signifcant losses in productivity and fnancial impact on farmers.
- Source
- Author's Submission
- Date
- 2025-01-01
- Publisher
- Christ(Deemed to be University)
- Subject
- Computer Science and Engineering
- Rights
- Open Access
- Relation
- 61000438
- Format
- Language
- English
- Type
- PhD
- Identifier
- http://hdl.handle.net/10603/621302
Collection
Citation
Patil, Manoj , “A Novel Approach for Sensitive Crop Disease Prediction Based on Computer Vision Techniques,” CHRIST (Deemed To Be University) Institutional Repository, accessed February 22, 2025, https://archives.christuniversity.in/items/show/12476.