Face Re-Identification for Digital Signage Applications

نویسندگان

  • Giovanni Maria Farinella
  • Giuseppe Farioli
  • Sebastiano Battiato
  • Salvo Leonardi
  • Giovanni Gallo
چکیده

The estimation of soft biometric features related to a person standing in front an advertising screen plays a key role in digital signage applications. Information such as gender, age, and emotions of the user can help to trigger dedicated advertising campaigns to the target user as well as it can be useful to measure the type of audience attending a store. Among the technologies useful to monitor the customers in this context, there are the ones that aim to answer the following question: is a specific subject back to the advertising screen within a time slot? This information can have an high impact on the automatic selection of the advertising campaigns to be shown when a new user or a re-identified one appears in front the smart screen. This paper points out, through a set of experiments, that the re-identification of users appearing in front a screen is possible with a good accuracy. Specifically, we describe a framework employing frontal face detection technology and re-identification mechanism, based on similarity between sets of faces learned within a time slot (i.e., the models to be re-identified) and the set of face patches collected when a user appears in front a screen. Faces are pre-processed to remove geometric and photometric variability and are represented as spatial histograms of Locally Ternary Pattern for re-identification purpose. A dataset composed by different presentation sessions of customers to the proposed system has been acquired for testing purpose. Data have been collected to guarantee realistic variabilities. The experiments have been conducted with a leave-one-out validation method to estimate the performances of the system in three different working scenarios: one sample per presentation session for both testing and training (one-to-one), one sample per presentation session for testing and many for training (oneto-many), as well as considering many samples per presentation sessions for both testing and training (many-to-many). Experimental results on the considered dataset show that an accuracy of 88.73% with 5% of false positive can be achieved by using a many-to-many re-identification approach which considers few faces samples in both training and testing. 2 G. M. Farinella et al.

برای دانلود رایگان متن کامل این مقاله و بیش از 32 میلیون مقاله دیگر ابتدا ثبت نام کنید

ثبت نام

اگر عضو سایت هستید لطفا وارد حساب کاربری خود شوید

منابع مشابه

Interactive and Audience Adaptive Digital Signage Using Real-Time Computer Vision

In this paper we present the development of an interactive, content‐aware and cost‐effective digital signage system. Using a monocular camera installed within the frame of a digital signage display, we employ real‐time computer vision algorithms to extract temporal, spatial and demographic features of the observers, which are further used for observer‐specific broadcastin...

متن کامل

eMir: Digital Signs that react to Audience Emotion

In this paper we present eMir, digital signage (public electronic displays) that show human faces which react to audience emotion. Using a camera installed at the sign, the system observes the audience and detects whether someone watches the display via face detection software. The face detection is able to classify facial expressions and determine gender. This information is used to let a huma...

متن کامل

Interactive and audience-adaptive information interfaces

In the doctoral thesis we developed an interactive and user-adaptive information interface based on computer vision and machine learning methods. By using a camera-enhanced digital signage display we employed realtime computer vision algorithms to extract temporal, spatial, and demographic features of the observers, which are further used for observer specific broadcasting of digital signage co...

متن کامل

A Modular Framework to Detect and Analyze Faces for Audience Measurement Systems

In this paper we describe an approach that enables the detection, tracking and fine analysis (classification of gender and facial expression) of faces using a single web camera. One focus of the paper lies in the description of the concept of a framework that was designed in order to create a flexible environment for varying detection tasks. We describe the functionality, the setup of the frame...

متن کامل

ReflectiveSigns: Digital Signs That Adapt to Audience Attention

This paper presents ReflectiveSigns, i.e. digital signage (public electronic displays) that automatically learns the audience preferences for certain content in different contexts and presents content accordingly. Initially, content (videos, images and news) are presented in a random manner. Using cameras installed on the signs, the system observes the audience and detects if someone is watchin...

متن کامل

ذخیره در منابع من


  با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید

عنوان ژورنال:

دوره   شماره 

صفحات  -

تاریخ انتشار 2014