Download Complete Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm Research Materials (PDF/DOC)
The project aims to revolutionize disease monitoring through the use of artificial intelligence (AI), advanced sensor technology, and crowd-sourcing, connecting the global agricultural community to support smallholder farmers. Specifically, a Convolutional Neural Network (CNN) was employed in this study. CNN models offer promise in enhancing plant disease phenotyping, where traditional methods rely on visual diagnostics requiring specialized training. Deploying CNNs on mobile devices presents new challenges such as varying lighting conditions and orientations. Therefore, evaluating these models under real-world conditions is crucial for their reliable integration into computer vision tools for plant disease assessment.
Our approach involved training a CNN object detection model to identify foliar disease symptoms in cassava (Manihot esculenta Crantz). Subsequently, we implemented the model in a mobile application and assessed its performance using images and videos captured in an agricultural field in Nigeria, totaling 720 diseased leaf samples. We conducted tests for two severity levels of symptoms—mild and pronounced—within each disease category to evaluate the model’s effectiveness in early symptom detection.
Across both severity levels, we observed a decline in performance metrics, specifically the F-1 score, when analyzing real-world images and video data. Notably, the F-1 score decreased by 32% for pronounced symptoms in real-world images, primarily due to reduced model recall. Our findings underscore the importance of fine-tuning recall metrics to achieve desired performance levels in practical settings if mobile CNN models are to fulfill their potential. Additionally, the varying performance outcomes between image and video inputs highlight critical considerations for designing applications intended for real-world deployment
Click the button below to INSTANTLY subscribe and download the COMPLETE MATERIAL (PDF/DOC)!
Not What You Are Searching For?
Search another topic here
The abstract section provides a concise summary of the Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm, including the issue statement, methodology, findings, and conclusion
The introduction section introduces the Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm by offering background information, stating the problem, aims, research questions or hypotheses, and the significance of the research
The literature review section presents a review of related literature that supports the current research on the Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm, systematically identifying documents with relevant analyzed information to help the researcher understand existing knowledge, identify gaps, and outline research strategies, procedures, instruments, and their outcomes
The conclusion section of the Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm summarizes the key findings, examines their significance, and may make recommendations or identify areas for future research
References section lists out all the sources cited throughout the Artificial Intelligence Mobile App For Identification Of Cassava Diseases In Farm, formatted according to a specific citation style
View Complete Guidelines