vioft2nntf2t|tblJournal|Abstract_paper|0xf4ff07d42b0000002b23060001000400 A lot of detail is transmitted by the face, an essential part of the body. If there is a car in a facial movement, for example, the frequency of yawning & blinking is distinct from that of fatigue state. It's in its natural state. We suggest a new system to determine the standard of the driver. Centered on face monitoring and facial main point identification of fatigue. We are developing a new algorithm and proposing the Kernelized Convolutionary Neutral Network Multiple Convolutionary Haar Cascade (MCHC-KCNN) Algorithm for monitoring the face of the driver using CNN and MCHC and give 0.9827 accuracy to boost the original algorithm previously proposed algorithm. Haar-feature is similar to CNN kernel, except that values of a kernel in a CNN are defined by training, and Haar-feature is determined manually. We studied the fundamentals of face detecting & eye recognition with Haar Feature-based Cascade Classifiers in this article. At first, the algorithm requires a lot of good images (faces) & poor images (face-free images) to train the classification process. Then we must remove from it some features. Haar features seen in the image below are utilized for this purpose. They are just like our convolutional kernel which gives 0.9827 accuracy i.e., efficient and more than the previous approach. We have improved our model by employing an efficient Optimizer, loss function, and layers which optimizes the algorithm in a complex setting, as low light, to enhance the latter's efficiency.
Arju Bano, Akash Saxena, Gaurav K R Das Compucom Institute of Technology and Management, India
Face Tracking, Convolutional Neural Multiple Convolutionary Haar Cascade (MCHC-KCNN) Haar Feature- based Cascade Classifiers, Deep Learning, Deep Neural Network.
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| Published By : ICTACT
Published In :
ICTACT Journal on Data Science and Machine Learning ( Volume: 2 , Issue: 2 , Pages: 165-171 )
Date of Publication :
March 2021
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