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Daily Archives: January 7, 2026

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“Virtual Mouse Using Hand & Eye Gesture and Chatbot”

Authors: Prof. Supriya G Purohit, Mr.Tanveer Ahmed, Mr.Syed Adnan, Mr.Mohammed Zaid Noman

Abstract: In an increasingly digital world, the need for accessible and intuitive human-computer interaction (HCI) solutions is more critical than ever—especially for individuals with physical disabilities. This project proposes a Virtual Mouse System that integrates hand gestures, eye tracking, and an AI-powered chatbot to offer a seamless, multimodal interface for touch-free computing. By combining real-time computer vision, deep learning, and natural language processing (NLP), the system replaces traditional input devices like keyboards and mice with a more inclusive and efficient alternative. The hand gesture module utilizes OpenCV, MediaPipe, and Convolutional Neural Networks (CNNs) to detect and interpret finger movements and predefined gestures for cursor movement, clicking, and scrolling. The eye-tracking module employs Haar cascade classifiers, Hough Transform, and Eye Aspect Ratio (EAR) techniques to track gaze and blinks for cursor control and selection, enabling hands-free navigation. To enhance interactivity, a chatbot module powered by NLP models such as BERT or GPT handles voice and text-based queries for performing system-level commands and basic computational tasks. Communication among these modules is managed through a Flask-based backend, ensuring synchronized, responsive interaction. Designed for both general users and those with motor impairments, the system addresses limitations found in standalone gesture or voice- based solutions, such as lighting sensitivity, gesture misrecognition, or voice command errors. By integrating multiple input modalities, the system enhances accuracy, usability, and user autonomy. Applications span from accessibility tools to smart environments, virtual reality, and beyond. Future work includes improving gaze estimation through deep learning and enhancing chatbot capabilities for broader conversational interaction.

DOI: https://doi.org/10.5281/zenodo.18169212

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An Intelligent System For Automated Detection And Identification Of Bone Trauma Using Deep Learning

Authors: Anirudh S, Tanuja R

Abstract: Fractures and bone trauma are serious injuries that are increasing in frequency worldwide. In some cases, these injuries are not easily visible through traditional diagnostic methods such as x-rays, leading to misdiagnosis and inadequate treatment. To address this issue, a Computer-Aided Diagnosis and Recommendation System could be developed, which utilizes various deep learning techniques to accurately detect the severity of the fracture and recommend appropriate exercises, diet plans, and surgeries for recovery. This system would incorporate techniques such as deep learning convolutional neural networks, edge detection, ridge regression, and image smoothing to enhance accuracy and provide more precise recommendations. Each technique would contribute unique features to the system, resulting in better outcomes for patients.

DOI: https://doi.org/10.5281/zenodo.18169049

 

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