DETEKSI KANTUK PADA PENGEMUDI BUS TRANS METRO BANDUNG DENGAN PENDEKATAN RUMUS EYE ASPECT RATIO
Abstract
Kecelakaan lalu lintas merupakan kejadian yang paling umum terjadi di dunia, terutama Indonesia. Kecelakaan lalu lintas banyak disebabkan oleh beberapa faktor, salah satunya yaitu rasa kantuk pengemudi. Rasa kantuk pengemudi sering timbul ketika pengemudi mulai kelelahan, maupun ketika perjalanan terasa membosankan seperti perjalanan jauh maupun ketika terlalu lama berada dalam kemacetan. Pada saat ini, belum banyak diaplikasikan sistem pendeteksi rasa kantuk pengemudi kendaraan. Pada perjalanan jauh, pengemudi bus harus selalu ditemani seorang ‘kernet’ atau pembantu pengemudi saat perjalanan, yang kurang efektif karena jika ‘kernet’ tersebut tertidur maka tidak ada yang memantau rasa kantuk pengemudi. Eye Aspect Ratio (EAR) bekerja dengan menghitung jarak Euclidean antar 6 titik facial landmarks pada masing-masing mata. Akurasi sistem akan diuji dengan mengakuisisi wajah pengemudi bus TMB. Keakuratan sistem akan didapatkan jika pengemudi terdeteksi mengantuk. Dari hasil pengujian, didapatkan nilai threshold EAR terbaik yaitu x dengan akurasi sistem x%. Setelah dilakukan pengujian akurasi, dilanjutkan dengan mencoba deteksi secara real-time. Hasilnya, posisi wajah dan intensitas cahaya berpengaruh terhadap pendeteksian.
Kata kunci: deteksi kantuk, eye aspect ratio, facial landmarks, real-time, Trans Metro Bandung (TMB).
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