Developing intelligent systems to prevent car accidents can be very effective in minimizing accident death toll. One of the factors which play an important role in accidents is the human errors including driving fatigue relying on new smart techniques; this application detects the signs of fatigue and sleepiness in the face of the person at the time of driving. The proposed system is based on three separate algorithms. In this model, the person's face is filmed by a camera in the first step by receiving 14-16 fps video sequence. Then, the images are transformed from RGB space into YCbCr and HSV spaces. The face area is separated from other parts and highly accurate HDP is achieved. That the eyes are open or closed in a specific time interval is determined by focusing on threshold and equations concerning the symmetry of human faces. The proposed system has been implemented on more than thirty different video sequences with average accuracy of 93.18% and detection rate (DR) of 92.71 % out of approximately 2500 image frames. High accuracy in segmentation, low error rate and quick processing of input data distinguishes this system from similar ones. This system can minimize the number of accidents caused by drivers' fatigue.
Abhishek GaddeAbhinandan GordeAditya BopteNidhi KapgateAashay NevatiaSwapna Choudhari
Sarvesh ChalageriPraneel K. ASohan JaliT SomeshwarK VanishreeS. Swetha
A.SirishaDr.VanajaroselinK.Hari KrishnaB.Sravan Kumar
A.SirishaDr.VanajaroselinK.Hari KrishnaB.Sravan Kumar