Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/132589
Title: Assessment and estimation of face detection performance based on deep learning for forensic applications
Authors: Chaves, Deisy
Fidalgo, Eduardo
Alegre, Enrique
Alaiz-Rodríguez, Rocío
Jáñez-Martino, Francisco
Azzopardi, George
Keywords: Human face recognition (Computer science) -- Technological innovations
Deep learning (Machine learning)
Crime laboratories -- Equipment and supplies
Regression analysis -- Computer programs
Image processing -- Digital techniques
Issue Date: 2020
Publisher: MDPI AG
Citation: Chaves, D., Fidalgo, E., Alegre, E., Alaiz-Rodríguez, R., Jáñez-Martino, F., & Azzopardi, G. (2020). Assessment and estimation of face detection performance based on deep learning for forensic applications. Sensors, 20(16), 4491.
Abstract: Face recognition is a valuable forensic tool for criminal investigators since it certainly helps in identifying individuals in scenarios of criminal activity like fugitives or child sexual abuse. It is, however, a very challenging task as it must be able to handle low-quality images of real world settings and fulfill real time requirements. Deep learning approaches for face detection have proven to be very successful but they require large computation power and processing time. In this work, we evaluate the speed–accuracy tradeoff of three popular deep-learning-based face detectors on the WIDER Face and UFDD data sets in several CPUs and GPUs. We also develop a regression model capable to estimate the performance, both in terms of processing time and accuracy. We expect this to become a very useful tool for the end user in forensic laboratories in order to estimate the performance for different face detection options. Experimental results showed that the best speed–accuracy tradeoff is achieved with images resized to 50% of the original size in GPUs and images resized to 25% of the original size in CPUs. Moreover, performance can be estimated using multiple linear regression models with a Mean Absolute Error (MAE) of 0.113, which is very promising for the forensic field.
URI: https://www.um.edu.mt/library/oar/handle/123456789/132589
Appears in Collections:Scholarly Works - FacICTAI



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