• Home
  • /
  • Course
  • /
  • AI for Pest & Disease Detection: Build an Image Classifier
Sale!

AI for Pest & Disease Detection: Build an Image Classifier

Original price was: USD $99.00.Current price is: USD $59.00.

Hands-On Deep Learning for Crop Pest & Disease Detection

Category:

About This Course
AI for Pest & Disease Detection: Build an Image Classifier is a fully hands-on, project-based course where participants learn how to turn simple leaf photos into an AI-powered decision-support tool for farmers. Using Google Colab, Python, and transfer learning (MobileNet/ResNet), you will work step-by-step with real plant health images to build, train, and test an image classifier that can flag likely diseases/pests and generate simple advisory messages.

Aim
This hands-on course equips participants with practical skills to build, evaluate, and responsibly use an AI-based image classifier for crop pest and disease detection—starting from raw leaf images and ending with a simple “farmer-facing” decision-support flow.

Course Objectives

  • Introduce fundamentals of AI-based pest and disease detection using leaf images

  • Enable dataset exploration, organisation, and quality assessment in Google Colab

  • Guide learners to build a transfer learning–based classifier for crop pest/disease classes

  • Interpret predictions (class + confidence) and map them to advisory messages for farmers

  • Understand risks, limitations, and bias of image-only diagnosis + need for expert validation

  • Design a practical deployment flow (app/WhatsApp bot + agronomist) for real extension use


Course Structure

✅ Module 1 – Data & Image Classification Basics (Hands-on)

  • Problem framing: farmer takes a picture → app gives “likely disease + advice”

  • Hands-on: mount Google Drive in Colab, list images, visualise samples (matplotlib)

  • Image quality discussion: lighting, angle, blur/noise and effect on performance

  • Mini dataset tour: folder structure (healthy/, diseased/ or 3–4 classes)

  • Quick reflection: limitations of AI purely from images
    👉 Outcome: Colab Notebook 01_pest_image_dataset_exploration.ipynb + labelled training image folder ready for modelling


✅ Module 2 – Build & Train a Simple Classifier (Transfer Learning Lab)

  • Concept: transfer learning and why it works well for small datasets

  • Hands-on: load pre-trained MobileNet/ResNet, freeze base layers

  • Build model head: add classification layers for pest/disease classes

  • Training lab: train for a few epochs + view accuracy/loss curves

  • Quick test: upload a new leaf image and check predicted class
    👉 Outcome: Colab Notebook 02_pest_classifier_training.ipynb + first working “AI diagnosis” classifier (baseline model)


✅ Module 3 – Responsible Use & Deployment Ideas (Design + Reporting)

  • Discussion: error, bias & impact (misclassification → wrong spraying advice and risk)

  • Hands-on: generate prediction report (class, confidence, advisory template message)

  • Design exercise: sketch an app/WhatsApp bot flow using the trained model

  • Human-in-the-loop: add agronomist/extension validation step into workflow

  • Extension ideas: more classes, multilingual advisory, helpline integration
    👉 Outcome: Colab Notebook 03_pest_classifier_reporting_and_flow.ipynb + deployment flow diagram for documentation


Who Should Enrol?

  • UG/PG students in Agriculture, Agricultural Engineering, Plant Pathology, Biotechnology, Data Science, etc.

  • Researchers & faculty applying AI/ML/computer vision to crop health

  • Professionals from agri-input firms, agri-tech startups, FPOs, NGOs, extension services

  • AI/ML learners who want a practical agriculture-focused image classification project

Preferred background (not mandatory):
Basic programming familiarity (Python is a plus) + comfort using Google Colab

Reviews

There are no reviews yet.

Be the first to review “AI for Pest & Disease Detection: Build an Image Classifier”

Your email address will not be published. Required fields are marked *

Certificate Image

What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

All Live Workshops

AI for Ecosystem Intelligence, Biodiversity Monitoring & Restoration Planning
Blockchain for Supply Chain: Smart Contract Development & Security Auditing
Agri-Tech Analytics: NDVI Time-Series Analysis from Satellite Imagery

Feedbacks

AI-Powered Multi-Omics Data Integration for Biomarker Discovery

Great course. Thank you very much.


Abdul Mueed Hafiz : 11/25/2025 at 2:55 pm

Well-organized and good presenter


Rim Abdul kader Mousa : 04/20/2025 at 3:49 pm

CRISPR-Cas Genome Editing: Workflow, Tools and Techniques

Mentor had very good knowledge and hang ,over the topic and cleared the doubts with clarity. I would More like to build circles of that stature to get deeper insights in the molecular biology field.
Praneeta P : 08/03/2024 at 6:31 pm

CRISPR based Gene Therapy Workshop

Clear and thorough explanations


Carmen Longo : 05/06/2024 at 10:06 pm

I would appreciate it if you could be mindful of the scheduling.


Sowon CHOI : 01/30/2025 at 3:33 pm

Protein Structure Prediction and Validation in Structural Biology

The mentor was good, I think a great improvement to the lectures could be gained by a better, More non-ambiguous use of words and terminology.
Ciotei Cristian : 02/09/2024 at 2:04 pm

Biological Sequence Analysis using R Programming

great


Md Abdullah Al Baki : 09/10/2025 at 7:56 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

Mam explained very well but since for me its the first time to know about these softwares and More journal papers littile bit difficult I found at first. Then after familiarising with Journal papers and writing it .Mentors guidance found most useful.
DEEPIKA R : 06/10/2024 at 10:48 am