Category Archives: Uncategorized

Lightweight Real-Time Footfall Counting System Using YOLOv8 And Centroid Tracking For Resource-Constrained Environmen

Uncategorized

Authors: Piyush Kotkar, Pratik Halnor, Sakshi Kapse, Harshal Adhav, Atharva Dhawale

Abstract: Real-time foot traffic monitoring is now a key part of retail analytics, campus management, and smart surveillance. However, limitations in computing power make it hard to use heavy deep-learning models in low-power settings. This paper introduces a lightweight footfall counting system that uses YOLOv8n and YOLOv8s along with a centroid-based tracking method for effective ID persistence and directional counting. Experimental results indicate that YOLOv8n reaches 4.1 FPS on CPU-only systems with 98–99% ID stability, surpassing YOLOv8s in real-time performance. The system works well for embedded platforms, public monitoring, and budget-sensitive deployments.

DOI: https://doi.org/10.5281/zenodo.18596112

Published by:

Design And Analysis Of Neural Networks, Fuzzy Logic, And Expert Systems For Intelligent Decision-Making

Uncategorized

Authors: Mr. Viraj Kishor Chitte, Mr. Om Anant Aher, Mr. Darshan Santosh Bhandari, Mr. Sai Yogesh More, Mrs. Smita Manohar Dighe

Abstract: Neural networks, fuzzy logic, and expert systems are fundamental to the development of intelligent systems capable of addressing complex decision-making challenges across various domains. Neural networks, inspired by the structure of the human brain, demonstrate proficiency in pattern recognition, data classification, and high-accuracy prediction. Fuzzy logic facilitates reasoning under uncertainty, enabling systems to process imprecise inputs and generate responses that resemble human reasoning. Expert systems employ rule-based reasoning to emulate expert decision-making, delivering reliable solutions across healthcare, diagnostics, and industrial automation. This paper examines the underlying principles, strengths, limitations, and applications of these three artificial intelligence techniques. Through comparative analysis, it highlights their performance distinctions and unique contributions to intelligent problem-solving. Additionally, the study investigates the advantages of integrating these methods to create hybrid intelligent systems with improved adaptability, accuracy, and reliability. Such integrated approaches have the potential to advance AI-driven solutions in smart systems, real-time monitoring, and automated decision support.

DOI: https://doi.org/10.5281/zenodo.18596011

Published by:

Smart Agriculture System Using IoT And Machine Learning For Automated Irrigation Management

Uncategorized

Authors: Kewal Manish Patel, Gaurav Tushar Kokate, Durvesh Amit Amale, Shubham Musmade, Atharva Gare

Abstract: Agriculture in India faces challenges such as unpredictable rainfall, improper irrigation planning, and inefficient use of water resources. To address these issues, this paper proposes a Smart Agriculture System that integrates Internet of Things (IoT) sensors with a lightweight Machine Learning model to optimize irrigation. The system collects real-time soil moisture, temperature, humidity, and light intensity data using low-cost sensors such as the soil moisture sensor and DHT11. The data is sent to a cloud platform through an ESP8266/NodeMCU microcontroller for monitoring. A simple ML model, such as Linear Regression or Decision Tree, predicts the required watering level based on sensor patterns. When moisture falls below the predicted threshold, the system automatically activates a water pump and sends an alert to the farmer’s mobile dashboard. The proposed solution reduces water wastage, increases crop health, and facilitates precision agriculture. This work demonstrates how IoT and ML together can support sustainable agricultural practices, contributing to UN Sustainable Development Goals (SDG-2 and SDG-12). The prototype is easy to implement, low-cost, and scalable for real-world applications.

DOI: https://doi.org/10.5281/zenodo.18595980

Published by:

Voice-Activated Al Safety Pendant For Women With Real-Time Location Sharing And Emergency Alert Transmission To Contacts Via Mobile App

Uncategorized

Authors: Jayashree Chava, Prasad Chavan, Dr. Pritish Vibhute

Abstract: Women’s safety continues to be a pressing concern globally, and timely access to help often determines the outcome of critical situations. With rapid advances in electronics and communication technology, there is growing potential to build practical tools that can offer support when it is needed most. This work presents a compact, AI-enabled wearable safety device developed specifically to assist women during emergencies. The device operates hands-free and relies on on-device voice recognition, implemented on an ESP32-S3 microcontroller trained using Edge Impulse. It uses Bluetooth Low Energy (BLE) to connect with a companion Android application. When the system recognizes the spoken keyword “Help! Help!” it functions entirely offline to activate the mobile app. The app then automatically fetches the user’s GPS location and sends an SOS alert to selected emergency contacts. It also uses the Google Places API to identify nearby police stations for quicker support. To strengthen post-incident reporting, the wearable includes an AI-based motion and image-capture module that records relevant visual evidence through its built-in camera. The prototype is designed to be power-efficient, affordable, and mindful of user privacy, making it suitable for both rural and urban environments. Overall, the proposed system shows how edge AI and IoT connectivity can be combined to create a practical and reliable personal-safety solution.

DOI: https://doi.org/10.5281/zenodo.18595926

Published by:

Challenges In Indian Agriculture And Government Interventions: A Review

Uncategorized

Authors: Ashwini Shinde, Dr. Kiran Wakchaure

Abstract: India’s agriculture sector remains the backbone of rural livelihoods and national food security, contributing substantially to economic growth and employment. However, farmers continue to encounter a wide range of structural and socio-economic barriers, including small and fragmented landholdings, heavy reliance on monsoon rains, inadequate technological adoption, post-harvest inefficiencies, financial vulnerabilities, and unstable market prices. Additional constraints such as rising labour expenses, low levels of mechanization, limited irrigation coverage, and insufficient knowledge of sustainable practices further limit agricultural productivity. This review paper explores these complex challenges in detail while assessing the effectiveness of major government programmes designed to address them. Key schemes—such as the Pradhan Mantri Fasal Bima Yojana (PMFBY), PM-Kisan income support, Soil Health Card initiative, e-NAM digital marketplace, Pradhan Mantri Krishi Sinchai Yojana (PMKSY), Minimum Support Price (MSP) mechanisms, and emerging digital agriculture efforts—are evaluated for their role in improving productivity, farmer income, and risk management. The study identifies notable policy successes as well as areas requiring improvement, emphasizing the need for integrated, technology-oriented, and farmer-focused strategies.

DOI: https://doi.org/10.5281/zenodo.18595876

Published by:

Smart Mental Health Assistant -An Ai Based Support System For Emotional Well-Being

Uncategorized

Authors: Aliza Sayyad, Dr. Pravin Khatkale

Abstract: The prevalence of mental health conditions in- cluding stress, anxiety, and depression is on the rise worldwide, but stigma, ignorance, and a lack of mental health experts con- tinue to hinder early detection and ongoing emotional support. The Smart Mental Health Assistant, an AI-powered support sys- tem intended to assess user symptoms, forecast potential mental health issues, and offer tailored self-care advice, is the idea behind this project. The system incorporates a chatbot interface for user interaction and advice, Random Forest Classifier for mental health prediction, and Natural Language Processing (NLP) for symptom extraction. In order to effectively diagnose mental health disorders, the system transforms retrieved symptoms into binary vectors using datasets that include symptoms, severity lev- els, and preventative measures. This paper examines the body of research on AI in mental health, pinpoints important variables affecting technology uptake, and emphasizes the significance of scalable and easily accessible mental health resources. The re- sults show that early diagnosis, emotional monitoring, and pre- ventive treatments could all be enhanced by AI-based screening systems. By facilitating ongoing assistance, lowering stigma, and enhancing psychological well-being, the suggested assistant bene- fits the mental health ecosystem.

DOI: https://doi.org/10.5281/zenodo.18595836

Published by:

Review On Novel Approach To Enhancement MRI Image Brain Tumor Detection Using SVM And Artificial Neural Network Algorithm

Uncategorized

Authors: Chinmay Chouhan, Assistant Professor Srashti Thakur

Abstract: Brain tumor segmentation is an important task in medical image processing. Early diagnosis of brain tumors plays an important role in improving treatment possibilities and increases the survival rate of the patients. Manual segmentation of the brain tumors for cancer diagnosis, from large amount of MRI images generated in clinical routine, is a difficult and time consuming task. There is a need for automatic brain tumor image segmentation. The purpose of this paper is to provide a review of MRI-based brain tumor segmentation methods. Recently, automatic segmentation using deep learning methods proved popular since these methods achieve the state-of-the-art results and can address this problem better than other methods. Deep learning methods can also enable efficient processing and objective evaluation of the large amounts of MRI-based image data. There are number of existing review papers, focusing on traditional methods for MRI-based brain tumor image segmentation. Different than others, in this paper, we focus on the recent trend of deep learning methods in this field. First, an introduction to brain tumors and methods for brain tumor segmentation is given. Then, the state-of-the-art algorithms with a focus on recent trend of deep learning methods are discussed. Finally, an assessment of the current state is presented and future developments to standardize MRI-based brain tumor segmentation methods into daily clinical routine are addressed.

Published by:

Design And Structural Analysis Of Helical Gear With Varying Helix Angle

Uncategorized

Authors: Neha Sahu, Prof. Ruchika Saini

Abstract: This study focuses on the design and structural analysis of helical gears with varying helix angles to investigate their influence on mechanical performance. By designing helical gears with different helix angles and analyzing them under identical loading and boundary conditions, the study aims to evaluate changes in bending stress, contact stress, deformation, and axial force. The results of this investigation will help identify optimal helix angle ranges that enhance gear strength and longevity while minimizing undesirable effects such as excessive axial loads and material failure. The findings of this study are expected to contribute to improved gear design practices by providing insights into the relationship between helix angle variation and structural performance. Such insights are valuable for engineers and designers seeking to develop efficient, durable, and high-performance gear systems for modern mechanical applications.

Published by:

Eduable: A Multimodal AI-Learning For Disabilities

Uncategorized

Authors: Mrs. M. Lavanya, Ms. R. Kavinila, Ms. M. Harini, Ms. K. Keerthana

Abstract: Education for students with disabilities continues to face challenges due to inadequate accessibility tools, lack of adaptive content, and poor connectivity in rural areas. Existing technologies such as screen readers, speech-to-text converters, and sign language translators function independently, resulting in fragmented learning experiences. EduAble, is a multi modal AI-powered learning platform designed to support students with visual, hearing, mobility, and neurodiverse challenges. It integrates Text-to-Speech (TTS), Speech-to-Text (STT), sign language and gesture recognition, and adaptive content simplification to create a unified, inclusive learning environment. EduAble is developed using Django with Django REST Framework for backend processing and React Native for cross-platform mobile accessibility, supported by PostgreSQL for data storage.The platform employs advanced AI models such as gTTS for speech synthesis, CNN with MediaPipe and OpenCV for gesture and sign language detection, and BERT for text simplification using TensorFlow which collectively enhance learning accessibility and provide a more effective and integrated assistive education system.

DOI: https://doi.org/10.5281/zenodo.18585544

Published by:

Professional Development Priorities Among Different Age-Based Groups Of Higher Education Faculty In Institutes Of Delhi

Uncategorized

Authors: Dr. Suman Dhawan

Abstract: Faculty Development Programs (FDPs) are very important to the careers of teachers in higher education institutions. They become better at what they do, and the entire institution is improved. But the fact is that faculty members are not all alike, and age is actually a factor in what they want from an FDP. This research explores how the interests of faculty change with age. On the basis of a structured survey of 302 faculty members from various universities and colleges, a One-Way ANOVA test was conducted to determine how needs differ in three age groups: 25-34, 35-44, and 45 and above. The findings are quite striking. Age does make a difference. The younger generation is more concerned with handling classes and establishing a sound foundation in subject matter. The middle-aged faculty begin to tilt towards competency development and professional growth. The 45+ age group is more concerned with developing their personalities and management acumen. To synthesise all this, this study proposes an Age-Life-Cycle Model of Faculty Development Priorities. The study concludes that "one-size-fits-all" solutions do not work. If universities are serious about faculty development, they need to listen to where people are in their life cycle and provide development that fits.

DOI: http://doi.org/10.5281/zenodo.18584290

Published by:
× How can I help you?