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Human detection using a mobile platform and novel features derived from a visual saliency mechanism

机译:使用移动平台的人体检测和源自视觉显着性机制的新颖功能

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摘要

Human detection is a key ability to an increasing number of applications that operates in human inhabited environments or needs to interact with a human user. Currently, most successful approaches to human detection are based on background substraction techniques that apply only to the case of static cameras or cameras with highly constrained motions. Furthermore, many applications rely on features derived from specific human poses, such as systems based on features derived from the human face which is only visible when a person is facing the detecting camera. In this work, we present a new computer vision algorithm designed to operate with moving cameras and to detect humans in different poses under partial or complete view of the human body. We follow a standard pattern recognition approach based on four main steps: (i) preprocessing to achieve color constancy and stereo pair calibration, (ii) segmentation using depth continuity information, (iii) feature extraction based on visual saliency, and (iv) classification using a neural network. The main novelty of our approach lies in the feature extraction step, where we propose novel features derived from a visual saliency mechanism. In contrast to previous works, we do not use a pyramidal decomposition to run the saliency algorithm, but we implement this at the original image resolution using the so-called integral image. Our results indicate that our method: (i) outperforms state-of-the-art techniques for human detection based on face detectors, (ii) outperforms state-of-the-art techniques for complete human body detection based on different set of visual features, and (iii) operates in real time onboard a mobile platform, such as a mobile robot (15 fps).
机译:人体检测是越来越多的应用程序在人类居住环境中运行或需要与人类用户进行交互的一项关键能力。当前,最成功的人类检测方法是基于背景减除技术,该技术仅适用于静态相机或运动受限的相机。此外,许多应用依赖于源自特定人的姿势的特征,例如基于源自人脸的特征的系统,该特征仅当人面对检测相机时才可见。在这项工作中,我们提出了一种新的计算机视觉算法,该算法旨在与移动相机配合使用,并在部分或完整的人体视角下检测不同姿势的人体。我们遵循基于四个主要步骤的标准模式识别方法:(i)进行预处理以实现颜色恒定性和立体对校准;(ii)使用深度连续性信息进行分割;(iii)基于视觉显着性的特征提取;以及(iv)分类使用神经网络。我们方法的主要新颖之处在于特征提取步骤,其中我们提出了从视觉显着性机制派生的新颖特征。与以前的工作相比,我们不使用金字塔分解来运行显着性算法,而是使用所谓的积分图像以原始图像分辨率实现此算法。我们的结果表明,我们的方法:(i)优于基于面部检测器的最新人体检测技术;(ii)优于基于不同视觉组的全面人体检测的最新技术功能(iii)在移动平台(例如移动机器人(15 fps))上实时运行。

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