TY - GEN
T1 - A robust video identification framework using perceptual image hashing
AU - Vega, Francisco
AU - Medina, José
AU - Mendoza, Daniel
AU - Saquicela, Victor
AU - Espinoza, Mauricio
N1 - Publisher Copyright:
© 2017 IEEE.
PY - 2017/12/18
Y1 - 2017/12/18
N2 - This paper proposes a general framework that allows to identify a video in real time using perceptual image hashing algorithms. In order to evaluate the versatility and performance of the framework, it was coupled for a use case about ads tv monitoring. Four Perceptual Image Hashing (PIH) algorithms were subject to a benchmarking process in order to identify the best one for the use case. This process was focused on analyze differences in terms of discriminability (D), robustness (R), time processing (Tp) and efficiency (E). A truth table was used to obtain information about discriminability and robustness, while processing time was directly measured. An efficiency metric based on time processing and identification capacity was proposed. In general terms, DHASH and PHASH algorithms have higher identification capacities than AHASH and WHASH in order to identify a video using only one frame. Moreover, a progressive decrease in robustness with the increment of the Hamming distance is observed in all cases. However, in a specific case of tv monitoring where speed is critical, the processing time becomes the most discriminatory parameter for the selection of the algorithm. So, for this case, a particular type of PIH (Average Hash) is highlighted as the most efficient one among other techniques, reaching an accuracy of 100% and frame rates on processing average of 108 fps with a Hamming Distance of 1. At the end, the proposed framework has remarkable identification skills, and presents an efficient search. Furthermore, presents the steps to select the best algorithm and its more adequate parameters, according to the requirements of each particular case.
AB - This paper proposes a general framework that allows to identify a video in real time using perceptual image hashing algorithms. In order to evaluate the versatility and performance of the framework, it was coupled for a use case about ads tv monitoring. Four Perceptual Image Hashing (PIH) algorithms were subject to a benchmarking process in order to identify the best one for the use case. This process was focused on analyze differences in terms of discriminability (D), robustness (R), time processing (Tp) and efficiency (E). A truth table was used to obtain information about discriminability and robustness, while processing time was directly measured. An efficiency metric based on time processing and identification capacity was proposed. In general terms, DHASH and PHASH algorithms have higher identification capacities than AHASH and WHASH in order to identify a video using only one frame. Moreover, a progressive decrease in robustness with the increment of the Hamming distance is observed in all cases. However, in a specific case of tv monitoring where speed is critical, the processing time becomes the most discriminatory parameter for the selection of the algorithm. So, for this case, a particular type of PIH (Average Hash) is highlighted as the most efficient one among other techniques, reaching an accuracy of 100% and frame rates on processing average of 108 fps with a Hamming Distance of 1. At the end, the proposed framework has remarkable identification skills, and presents an efficient search. Furthermore, presents the steps to select the best algorithm and its more adequate parameters, according to the requirements of each particular case.
KW - perceptual image hashing
KW - video identification
UR - https://www.scopus.com/pages/publications/85046454761
U2 - 10.1109/CLEI.2017.8226396
DO - 10.1109/CLEI.2017.8226396
M3 - Contribución a la conferencia
AN - SCOPUS:85046454761
T3 - 2017 43rd Latin American Computer Conference, CLEI 2017
SP - 1
EP - 10
BT - 2017 43rd Latin American Computer Conference, CLEI 2017
A2 - Santos, Rodrigo
A2 - Monteverde, Hector
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 43rd Latin American Computer Conference, CLEI 2017
Y2 - 4 September 2017 through 8 September 2017
ER -