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Daily Archives: April 25, 2025

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Speech Emotion Recognition Using CNN

Speech Emotion Recognition Using CNN
Authors:-Pratiksha Sathe, Dr. Jasbir Kaur, Assistant Professor Suraj Kanal

Abstract-Speech Emotion Recognition (SER) is an evolving and critical field in human-computer interaction, aimed at identifying and interpreting human emotions through speech signals. The ability to recognize emotions accurately from speech has applications in various domains, including mental health diagnostics, customer service, and adaptive learning systems. This paper focuses on leveraging Convolutional Neural Networks (CNN) for SER, emphasizing their capability to perform robust feature extraction and accurate classification. CNNs excel in capturing both spatial and temporal characteristics of audio signals, making them particularly well-suited for processing speech data. By converting speech signals into Log-Mel spectrograms, which effectively represent the spectral and temporal properties of audio, the proposed model achieves high accuracy in recognizing a diverse range of emotions. The study demonstrates the practical application of CNNs for SER, highlights their advantages over traditional machine learning models, and evaluates their performance on benchmark datasets such as RAVDESS and IEMOCAP. The results underscore the potential of CNN-based approaches to advance the field of speech emotion recognition, paving the way for more sophisticated and empathetic human-computer interaction systems.

DOI: 10.61137/ijsret.vol.11.issue2.373/a>

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Silent Voice -The Sign Language Recognition Android Application Using Machine Learning Algorithm

Silent Voice -The Sign Language Recognition Android Application Using Machine Learning Algorithm
Authors:-Ms Mitali Pawar, Dr. Jasbir Kaur, Assistant Professor Ms.Sandhya Thakkar

Abstract-Sign language is an essential communication tool for people with speech and hearing impairments.”[4] The creation of an Android application for sign language recognition using machine learning methods is presented in this study. The program facilitates communication between sign language users and non-sign language users by using OpenCV and a machine learning model to process images and transform hand gestures into text. Real-time alphabetic sign recognition from live video input is possible with the suggested approach. The application guarantees effective gesture detection with low resource consumption by using TensorFlow Lite for model inference on mobile devices, which makes it appropriate for Android devices with low processing power. The system’s user-friendly interface facilitates quick and precise translations between sign language and other languages, encouraging inclusion and assisting in the removal of barriers to communication.

DOI: 10.61137/ijsret.vol.11.issue2.372/a>

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Developing an AI Based Interactive Chatbot for the Department of Justice’s Website

Developing an AI Based Interactive Chatbot for the Department of Justice’s Website
Authors:-Sulake Bhavya Sri Bai, Kamboja Akshith Swamy

Abstract-addition to the Department of Justice website to enhance the virtual experience. The new website upgrade is centered around an artificial intelligence-enabled chatbot that uses Natural Language Processing (NLP) to become more conversational and easier for visitors to interact with when they just speak to it. The DOJ website enhancement also offers a multilingual capability for all citizens, irrespective of their ability. It is powered by a scalable cloud-based infrastructure that ensures high availability and round-the-clock access. Long legal procedures that, regrettably, impede the ability of many regular people to obtain simple information or services are the main goals of this efficiency improvement. Key words: Natural Language Process (NLP), AI chatbot, voice assistant, legal technology, accessibility, public service automation, department of justice, and legal query resolution.

DOI: 10.61137/ijsret.vol.11.issue2.371/a>

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An Evaluation of Key Factors Influencing the Productivity of Plywood Shuttering in Construction Projects

An Evaluation of Key Factors Influencing the Productivity of Plywood Shuttering in Construction Projects
Authors:-Sachin, Dr. Amit Moza

Abstract-This research paper examines the critical factors that influence the productivity of plywood shuttering in construction projects—a fundamental element in modern formwork systems. Although plywood shuttering is favored for its cost-effectiveness, reusability, and ease of handling, practical productivity often falls short of theoretical benchmarks due to issues related to material quality, labor proficiency, adverse site conditions, and management practices. By integrating a detailed literature review, rigorous field observations, in-depth case studies, and quantitative productivity measurements (including time–motion studies and benchmark comparisons with IS 7272 and CPWD DAR 2021), this study establishes realistic productivity standards and proposes actionable strategies to enhance on-site efficiency. The findings provide valuable insights for optimizing resource allocation, reducing material wastage, and ultimately improving construction performance.

DOI: 10.61137/ijsret.vol.11.issue2.370/a>

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