
Letting Data Speak!
Case Study
AI-Powered Tyre Dimension Extraction System

About the Client
The e-commerce platform of one of the world’s largest tire manufacturers.

Challenge
The client faced difficulties in assisting online customers who wanted to purchase new tires but were unsure of their vehicle's tire dimensions. This uncertainty led to reduced conversion rates and potential customer dissatisfaction. The challenge was to develop an automated system that could accurately extract tire dimensions from images, simplifying the purchasing process for customers and increasing sales for the e-retailer.

Key Results
Increased e-commerce conversion rates by 25% for tire purchases.
Reduced customer support inquiries related to tire sizing by 80%.
Improved customer satisfaction scores significantly for the tire purchasing process.
Solution
JashDS developed a sophisticated computer vision system to extract tire dimensions from images:
Implemented an instance segmentation model (YoloV8) for zone detection, identifying areas containing tire dimensions, model, brand, and DOT information.
Developed a cropping and orientation correction algorithm to prepare detected zones for further processing.
Utilized an object detection model for character recognition within the cropped images.
Created a post-processing system with pattern checks to verify the accuracy of extracted tire dimensions.
Designed custom augmentation techniques based on model explanations to improve detection accuracy.
Implemented parallelization of zone processing to enhance system efficiency.
Developed a zone correction mechanism using pattern matching to further improve accuracy.
Utilized Azure ML pipeline to track experiment results and manage the machine learning workflow.

Technologies Used
YoloV8
Mask R-CNN
RTMDet
Azure Machine Learning
Computer Vision
Optical Character Recognition (OCR)
Instance Segmentation
Object Detection
Other Case Study Items
Revolutionizing Personal Loans with AI-Driven Underwriting
A leading Indian personal loan provider revolutionized their underwriting process by leveraging AI and machine learning to automate 80% of loan decisions. By integrating social and financial data into a sophisticated predictive algorithm, the company drastically reduced decision times to seconds expanded access to underserved segments, and achieved lower default rates compared to human underwriters.
Enhanced Jira Data Analysis for Strategic Insights
JashDS developed a flexible framework for analyzing Jira project data that is capable of handling varying export structures and custom fields. The solution leveraged GenAI and LLM technologies to provide actionable insights, identify productivity trends, and uncover potential risks across diverse software projects, resulting in a ___% improvement in team efficiency and a ___% increase in successful project outcomes.
AI Model for Retail Shelf Monitoring
JashDS revolutionized retail shelf management for a major grocery chain by developing an AI-powered real-time monitoring system. The solution utilized advanced computer vision techniques and deep learning models to detect out-of-stock and misplaced products, significantly improving inventory accuracy and enhancing the customer shopping experience while reducing manual labor costs.