Driver Alert System Using Convolutional Neural Network
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Abstract: Driver alert system is a project to detect the drowsiness of the driver with help of CNN—Convolutional Neural Network. In recent years, deep learning methods, particularly convolutional neural networks (CNNs), have shown promising results in detecting driver drowsiness. In this detection system, we are going to build a non-contact technique for judging different levels of driver alertness and facilitate early detection of a decline in alertness during driving. In such a case when drowsiness or yawning is detected, a warning alarm is issued to alert the driver. In our project, we will employ a convolutional neural network which detects the states of the eyes and mouth from the ROI images, and also we will be using OpenCV for gathering the images from the webcam and feeding them into the deep learning model which will classify whether the person’s eyes are ‘Opened’ or ‘Closed’. The model is trained on a large dataset of facial expressions representing different drowsiness levels to improve its accuracy and performance. By continuously monitoring the driver’s facial landmarks in real time, the system can ensure proactive intervention. The use of non-invasive techniques also ensures that the driver remains comfortable and undistracted. The alert mechanism can include both sound and visual cues to effectively bring the driver’s attention back to the road. Furthermore, the system is designed to operate efficiently even under varying lighting conditions and with different facial features. The CNN model is optimized for low-latency predictions to make sure alerts are timely. In conclusion, the proposed driver alert system using CNN shows great potential in improving road safety by detecting and alerting drivers. In the future, this system can be integrated with other vehicle safety mechanisms like automatic braking or steering control. It can also be enhanced with infrared sensors to work accurately during nighttime or in low-light environments. Additional features like tracking head movement or blink duration can further strengthen the model’s reliability. The project can be extended to support multi-driver environments, such as public transport systems. We can also deploy the system on edge devices like Raspberry Pi for real-time, on-board processing. With continuous advancements in AI and hardware, the scope for such smart safety systems is vast. This system not only ensures driver safety but also safeguards passengers and pedestrians by minimizing the chances of road accidents caused due to fatigue. The implementation of such technologies reflects the growing importance of AI in real-world safety-critical applications. Moreover, the system can be further enhanced by incorporating machine learning algorithms that adapt to individual driver patterns, offering personalized alerts based on their driving behavior.
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