Tag: INT. Hackathon

Hackathon Diaries #7 - The Third Eye

Hackathon Diaries #7 – The Third Eye

Greetings, fellow coders and tech enthusiasts. It’s the 7th and final edition of the INT. Hackathon Diaries V1.0. But don’t shed a tear just yet, we will be back soon with the next edition as our in-house masterminds are up and running with new and innovative ideas all the time. We’ve saved one of the bests for last, and it’s a project sure to keep you wide awake: The Third Eye – Driver’s Drowsiness and Mobile Distraction Detection Solution. The Third Eye We all know how dangerous driving is when we’re tired or distracted. It’s like playing Russian roulette with our lives, and those of everyone else on the road. But fear not, as The Third Eye team has come up with a solution that’s so clever, it’ll make you wonder why nobody thought of it before. Using the latest computer vision and machine learning technology, The Third Eye system monitors drivers in real time, watching for telltale signs of drowsiness or distraction. It’s like having a personal wake-up call or a stern aunt, reminding you to keep your eyes on the road and your hands on the wheel. It is to create the leeway to a sustainable and protected world while driving. The Team Arijit Datta Arnab Kanti Ghosh Pabitra Bhunia Nitesh Kumar Singh Rahul Lohar Suva Samanta Explosive Growth in the Market  Per recent reports, the global market for drowsiness monitoring systems was valued at a staggering $2.2 billion in 2019 and is projected to grow to $3.3 billion by 2027 with a CAGR of 5.2% during the forecast period.  But that’s not all, folks. The global market for distracted driving prevention technology is expected to explode from $1.27 billion in 2019 to a whopping $2.9 billion by 2025, with a CAGR of 12.7% during the forecast period.  These numbers speak volumes about the urgent need for cutting-edge solutions that keep drivers alert and focused behind the wheel. So get ready to join the race to the top as we explore the latest developments in driver safety technology that are taking the market by storm. Resolution Realms Scope 1 – Drowsiness Detection Prepare the dataset: Collect and prepare data for drowsiness detection. Augment the data: Improve the model’s performance by data augmentation techniques. Split the dataset: Divide the prepared dataset into training and testing sets. Configure the model: Customise the YOLOv5 model for drowsiness detection by modifying configuration files to specify hyperparameters, input image size, and a number of classes. Train the model: Train the YOLOv5 model using the prepared training set and the configured model. Evaluation: Measure the model’s performance on the testing set using evaluation metrics such as precision, recall, and F1 score. Fine-tune: Adjust the hyperparameters and retrain the model on the entire dataset or a subset of it to fine-tune the model. Deployment: Integrate the trained model into a mobile or web application for real-world drowsiness detection. Scope 2 – Mobile Phone Distraction Data collection: Gather a dataset of images depicting instances of mobile phone distraction. Data Preparation: Transform the annotations into a format that is compatible with YOLOv5, such as COCO or YOLO. Model configuration: Set up the YOLOv5 model to recognize mobile phone distractions. Model training: Employ a deep learning framework like TensorFlow or PyTorch to train the YOLOv5 model on the training set. Evaluation: Test the trained model on the test set to determine its accuracy and performance. Deployment: Deploy the trained model onto our device. Alert mode: Once our device detects a driver using a mobile phone while driving, it will emit a continuous alert message until the driver puts down the phone. Tech Stack AI/ML Azure Map Service Smart Band Edge Computing  IoT Wow Factors Scene 1: Driver wearing sunglasses Infrared (IR) cameras detect the heat signatures of objects, including human eyes, even when they are partially obstructed by sunglasses. Scene 2: Driving at night Night Vision Camera tracks the driver’s face and eye movements. Scene 3: Presence of multiple faces before the camera Detection of only the front face. Conclusion Stay tuned and keep your eyes peeled for the next edition, where we’ll bring you more cutting-edge solutions and innovations that are driving the industry forward. See you there.

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Hackathon Diaries #5 - Fraud Detection in Discharge Summary

Hackathon Diaries #5 – Fraud Detection in Discharge Summary

It’s time for the 5th edition of Hackathon Diaries. This time around, we are thrilled to present a project that is both timely and crucial – Fraud Detection in Discharge Summary. With healthcare fraud on the rise, there is a pressing need for innovative solutions that can identify and prevent fraudulent activities in the healthcare sector.  Our team of talented developers and data scientists have come together to tackle this challenge head-on and develop a system that can effectively detect fraudulent activities in discharge summaries. So, fasten your seatbelts and get ready for an exciting journey as we take you through our journey of building this game-changing solution. Fraud Detection in Discharge Summary Are you ready for a game-changer in the world of healthcare fraud detection? Our team of talented developers has come up with an innovative solution that will leave fraudsters shaking in their boots – the Fraud Detection in Discharge Summary project. By analysing a patient’s discharge summary, our system can quickly identify any suspicious or fraudulent activity and flag it for further investigation.  Say goodbye to financial losses due to fraudulent healthcare practices – our cutting-edge technology will help ensure that healthcare remains transparent and trustworthy for all.  The Team (Data Wizards) Arghya Chakraborty Anirban Bhattacharya Arindam Mukherjee Sourav Mukherjee Saurav Mandal Problem Statement Calling all healthcare warriors. Are you ready to take on one of the biggest problems facing insurance companies today? Providers falsifying or exaggerating hospital discharge summaries to receive higher reimbursement rates from insurers is costing them a fortune – and compromising the integrity of medical records. Besides financial Losses for insurance companies, the overall procedure consumes a good amount of time and also demands extensive levels of manual interventions. Proposed Solution The proposed solution is based on cutting-edge AI technology and is divided into two phases, each designed to accurately identify fraudulent activity and notify the relevant stakeholders. In Phase 1, the team developed an AI model that analyses contextual data and structural patterns within discharge summaries to identify any signs of fraud. This model is designed to identify inconsistencies and irregularities that may indicate fraudulent activity, and immediately notify the necessary parties to take action. Phase 1.1 focuses on the development phase, where the AI model will be trained to recognise and prevent fraud in handwritten discharge summaries. The implementation of AI-based content prevention techniques will be done to identify and flag any fraudulent activity. In Phase 2 (our future scope), the solution was taken to the next level by identifying discrepancies between discharge summaries and medical billings. The AI model is further trained on historic data to identify inconsistencies between provided discharge summaries and ideal discharge summaries. This would help identify fraudulent medical billing practices and notify the relevant stakeholders, helping to prevent further financial losses due to healthcare fraud. With this innovative solution, insurance organisations can rest assured that fraudulent activity in healthcare will be quickly and accurately identified to take appropriate actions to prevent further losses. Tech Stack Front-end: Django/Flask, HTML, CSS, and JS Back-end: Core Python, OCR, OpenCV, Database The Workflow How We Stand Out The solution is a first-of-its-kind that collects different fraud detection models under one umbrella, making it easier and more efficient. It boasts a blazing-fast processing time, taking an average of just 2.5 seconds per analysis. That means you can quickly identify and prevent fraudulent activity in real-time, without having to wait hours or days for results. Don’t settle for outdated and inefficient fraud detection methods – upgrade to our innovative solution today and take control of the fight against healthcare fraud.

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Hackathon Diaries #1

Hackathon Diaries #1 V2V (Vein to Vein) Monitoring

The grand INT. Hackathon 2023 enticed all innovators, problem solvers, and tech enthusiasts amongst us to take part to grab the chance to showcase their skills, collaborate with their colleagues, and bring their creative ideas to life. 

A plethora of innovative ideas came up in the areas of Web 3.0, AI/ML, and other related tech fields. This blog will showcase one such project, which grabbed the eyeballs of the jury members and the audience.

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Indus Net Technologies(INT.) Sponsored Hackathon For People

Indus Net Technologies(INT.) Sponsored Hackathon For People Who Just Can’t Stop Loving Technology

“Any sufficiently advanced technology is equivalent to magic.” – Sir Arthur C Clarke Yes, a magic that transforms ideas into reality. Technology is that beacon of hope in our lives; a blessing that keeps improving our lives for the better! And to acknowledge the contributions of technology, Indus Net Technologies(INT.) came up with a unique way of celebrating this joy with promising young minds. It was the 23rd of April, 2016, when a Mini Hackathon was sponsored at EntreSpark – 2016, at the Heritage Institute of Technology, Chowbaga Road from 8:30 am to 8:30 pm. A hackathon is a platform that enables people to use technology and let the figments of their imagination come to existence. The event was organized to promote young minds full of innovative ideas. The participants were young students with practical problems to solve within 12 hours. The winners were in the first, second and third positions where the first was the Heritage Institute of Technology, second was BP Poddar Institute and the third was again the Heritage Institute of Technology. Indus Net Technology’s (INT)  endeavors to bring out the technology ‘gurus’ inside each bright student was a sheer success that left both the participants and us yearning for more.

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