IoT-based vehicular accident detection using a deep learning model
by Ishu Rani; Bhushan Thakre; K. Jairam Naik
International Journal of Autonomous and Adaptive Communications Systems (IJAACS), Vol. 17, No. 1, 2024

Abstract: With the increase in population and running valuable time, the demand for cars has skyrocketed creating an unprecedented condition in spite of traffic risks and road collisions. The crashes are growing at an unprecedented pace; hence, they cause death. Since Machine Learning has taken over, previously complex problems have become feasible due to the promising real-life applications of these models. A learning model that learns over an image dataset, thereby classifying never-before-seen images and data based on the level of damage, has been proposed in this paper. The artificial neural network is used to train the model and to learn the similarities among images and accident data. The proposed solution is efficient as it was tried to improve the efficiency and accuracy of finding the polarity of images for the same order of dataset as compared to the existing work.

Online publication date: Wed, 10-Jan-2024

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