Abstract

Abstract. Recently, analysis of man events in real-time using computer vision techniques became a very important research field. Especially, understanding motion of people can be helpful to prevent unpleasant conditions. Understanding behavioral dynamics of people can also help to estimate future states of underground passages, shopping center like public entrances, or streets. In order to bring an automated solution to this problem, we propose a novel approach using airborne image sequences. Although airborne image resolutions are not enough to see each person in detail, we can still notice a change of color components in the place where a person exists. Therefore, we propose a color feature detection based probabilistic framework in order to detect people automatically. Extracted local features behave as observations of the probability density function (pdf) of the people locations to be estimated. Using an adaptive kernel density estimation method, we estimate the corresponding pdf. First, we use estimated pdf to detect boundaries of dense crowds. After that, using background information of dense crowds and previously extracted local features, we detect other people in non-crowd regions automatically for each image in the sequence. We benefit from Kalman filtering to track motion of detected people. To test our algorithm, we use a stadium entrance image data set taken from airborne camera system. Our experimental results indicate possible usage of the algorithm in real-life man events. We believe that the proposed approach can also provide crucial information to police departments and crisis management teams to achieve more detailed observations of people in large open area events to prevent possible accidents or unpleasant conditions.

Highlights

  • Automatic detection of people and understanding their behaviors from images became a very important research field, since it can provide crucial information especially for police departments and crisis management teams

  • In order to be able to monitor bigger events researchers tried to develop algorithms which can work on outdoor camera images or video streams

  • Arandjelovic (Arandjelovic, Sep. 2008) developed a local interest point extraction based crowd detection method to classify single terrestrial images as crowd and non-crowd regions. They observed that dense crowds produce a high number of interest points

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Summary

INTRODUCTION

Automatic detection of people and understanding their behaviors from images became a very important research field, since it can provide crucial information especially for police departments and crisis management teams. In a previous study Hinz et al (Hinz, 2009) registered airborne image sequences to estimate density and motion of people in crowded regions For this purpose, first a training background segment is selected manually to classify image as foreground and background pixels. In order to bring an automated solution to the problem, we propose a novel automatic framework to track people and to understand their behaviors from airborne images For this purpose, first we introduce our automatic crowd and people detection approach which is based on local features extracted from chroma bands of the input image. We believe that proposed dense crowd detection, people detection, and people tracking approaches can provide crucial information to police departments and crisis management teams to prevent possible accidents or unpleasant conditions

Local Feature Extraction
Detecting Dense Crowds Based on Probability Theory
Detecting People in Sparse Groups
PEOPLE TRACKING USING KALMAN FILTER
EXPERIMENTS
CONCLUSIONS AND FUTURE WORK
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