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Optimizing Helmet Detection with Hybrid YOLO Pipelines: A Detailed Analysis

arXiv.org Artificial Intelligence

Helmet detection is crucial for advancing protection levels in public road traffic dynamics. This problem statement translates to an object detection task. Therefore, this paper compares recent You Only Look Once (YOLO) models in the context of helmet detection in terms of reliability and computational load. Specifically, YOLOv8, YOLOv9, and the newly released YOLOv11 have been used. Besides, a modified architectural pipeline that remarkably improves the overall performance has been proposed in this manuscript. This hybridized YOLO model (h-YOLO) has been pitted against the independent models for analysis that proves h-YOLO is preferable for helmet detection over plain YOLO models. The models were tested using a range of standard object detection benchmarks such as recall, precision, and mAP (Mean Average Precision). In addition, training and testing times were recorded to provide the overall scope of the models in a real-time detection scenario.


Colleges rush to Anna Univ for nod to offer new engg courses Chennai News - Times of India

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Chennai: To reverse the droopy admission trend of engineering courses, colleges in Tamil Nadu have turned their eyes towards emerging areas such as artificial intelligence, data science and machine learning. More than 35 engineering colleges have applied to Anna University expressing interest to start BTech courses in artificial intelligence and data science, and computer science and business systems for the next academic year. All India Council for Technical Education (AICTE) has announced that engineering colleges would be allowed to start new courses in artificial intelligence, data science, cyber security, machine learning and block chain. Anna University had invited application for starting a course in artificial intelligence and data science. It has also began to frame syllabus for the course.


System identification and modeling for interacting and non-interacting tank systems using intelligent techniques

arXiv.org Artificial Intelligence

System identification from the experimental data plays a vital role for model based controller design. Derivation of process model from first principles is often difficult due to its complexity. The first stage in the development of any control and monitoring system is the identification and modeling of the system. Each model is developed within the context of a specific control problem. Thus, the need for a general system identification framework is warranted. The proposed framework should be able to adapt and emphasize different properties based on the control objective and the nature of the behavior of the system. Therefore, system identification has been a valuable tool in identifying the model of the system based on the input and output data for the design of the controller. The present work is concerned with the identification of transfer function models using statistical model identification, process reaction curve method, ARX model, genetic algorithm and modeling using neural network and fuzzy logic for interacting and non interacting tank process. The identification technique and modeling used is prone to parameter change & disturbance. The proposed methods are used for identifying the mathematical model and intelligent model of interacting and non interacting process from the real time experimental data.