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Ovrednotenje metod za samodejno zaznavanje obrazov
ID DE REGGI, ANDREAS LUKA (Author), ID Štruc, Vitomir (Mentor) More about this mentor... This link opens in a new window

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PID: 20.500.12556/rul/e1c40cdb-ed99-4453-8a3b-6719710384ef

Abstract
V pričujočem delu so predstavljeni problemi pri zaznavanju obrazov v slikah ter nekaj pristopov, kako te probleme rešiti. Opisan je sistem FDDB kot način enotnega sistema za ovrednotenje in primerjavo med različnimi pristopi zaznave. Izpostavljene so nekatere implementacije prosto dostopnih akademskih metod in brezplačne različice komercialnih rešitev. Med akademskimi metodami je povzeto ogrodje za zaznavanje objektov Viola-Jones, njegove izvedbe s Haarovo, LBP in SURF kaskado, rešitve z uporabo DPM, HOG piramide in SVM razvrščevalnikom ter primerjave svetilnosti pikslov. Predstavljene komercialne rešitve zajemajo Face++, ki koristi globoko učenje in nevronske mreže ter rešitve BetaFace, MS Project Oxford in Apple Photos, za katere metoda obdelave ni javno dostopna. Iz rezultatov je razvidno, da je možno s skrbno izbiro parametrov odprtokodnih rešitev dobiti vsaj primerljive rezultate s komercialnimi. Po primerjavi potrebnega časa za zaznavanje je mogoče zaključiti, da se najbolje obnese metoda pico. Najbolj natančen rezultat pa dajeta metodi HOG v izvedbi knjižnice dlib in DPM v izvedbi knjižnice voc-dpm.

Language:Slovenian
Keywords:zaznavanje obrazov, kaskadni rzvrščevalnik, primerjava zaznavalnikov, Viola-Jones zaznavalnik objektov, LBP, SURF, HOG, DPM, OpenCV, libccv, dlib, pico, FDDB
Work type:Undergraduate thesis
Organization:FE - Faculty of Electrical Engineering
Year:2016
PID:20.500.12556/RUL-81161 This link opens in a new window
Publication date in RUL:30.03.2016
Views:1884
Downloads:377
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Secondary language

Language:English
Title:Comparative assessment of face detection techniques
Abstract:
The paper introduces a few major issues with image face detection and presents some solutions to tackle them. It sets out with a description of the FDDB system as a means of evaluation and comparison of different approaches in this field. It furthermore examines some freely available implementations of academic methods and free versions of commercial solutions. Among the academic methods the paper concentrates on analysing the Viola-Jones object detection framework along with different implementations of the detection cascades based on Haar, LBP and SURF features. In addition, it describes solutions which use the DPM, HOG pyramids with a SVM classifier and pixel-intensity classifier. The selected commercial solutions presented in the paper include Face++ (which utilizes deep learning and neural network algorithms), BetaFace, MS Project Oxford and Apple Photos (which do not publicly reveal the method of detection). Finally, the paper concludes with establishing that a careful parameter selection of open-source solutions can bring about at least comparable results to those achieved with the commercial solutions. The comparison of detection time determines pico as the fastest method that still yields useful results while the HOG method implemented with dlib and the DPM method implemented with voc-dpm are found to give the most accurate results.

Keywords:face detection, cacade classifier, detector comparison, Viola-Jones object detector, LBP, SURF, HOG, DPM, OpenCV, libccv, dlib, pico, FDDB

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