Abstract

Person re-identification is an important topic in retail, scene monitoring, human-computer interaction, people counting, ambient assisted living and many other application fields. A dataset for person re-identification TVPR (Top View Person Re-Identification) based on a number of significant features derived from both depth and color images has been previously built. This dataset uses an RGB-D camera in a top-view configuration to extract anthropometric features for the recognition of people in view of the camera, reducing the problem of occlusions while being privacy preserving. In this paper, we introduce a machine learning method for person re-identification using the TVPR dataset. In particular, we propose the combination of multiple k-nearest neighbor classifiers based on different distance functions and feature subsets derived from depth and color images. Moreover, the neighborhood component feature selection is used to learn the depth features’ weighting vector by minimizing the leave-one-out regularized training error. The classification process is performed by selecting the first passage under the camera for training and using the others as the testing set. Experimental results show that the proposed methodology outperforms standard supervised classifiers widely used for the re-identification task. This improvement encourages the application of this approach in the retail context in order to improve retail analytics, customer service and shopping space management.

Highlights

  • Camera installations are widespread in several domains, from small business and large retail applications, to home surveillance applications, environment monitoring, facility access, sports venues and mass-transit

  • The authors compare the performance of the proposed methodology with respect to single k-Nearest Neighbor (K-NN) classifiers and other supervised machine learning algorithms widely used in the re-id literature

  • We describe a method for person re-identification based on features derived from both depth and color

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Summary

Introduction

Camera installations are widespread in several domains, from small business and large retail applications, to home surveillance applications, environment monitoring, facility access, sports venues and mass-transit. Person re-id becomes a useful tool to recognize consumers in a store properly, to study returning consumers and to classify different shopper clusters and targets The customer interactions such as (i) the level of attraction (i.e., attraction that the shelf is creating for consumers), (ii) the attention (i.e, the time consumers spend in front of a brand display) and (iii) the action (i.e., the number of consumers that enter the store and interact with particular merchandise) can be closely monitored through RGB-D cameras.

Background
Previous Works on Person Re-Identification
TVPR Dataset and Related Applications
Pre-Processing and Feature Extraction
Classification Stage
Predictive Model for TVD Descriptors
Predictive Model for TVH Descriptors
Combiner
Results
Baseline Results
Results of the Proposed Approach
Comparison with the Standard Supervised Machine Learning Algorithm
Conclusions and Future Works
Full Text
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