3DMODS: 3D moving obstacle detection system

G. Garibotto, M. Corvi, Carlo Cibei, Sara Sciarrino
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引用次数: 4

Abstract

The proposed system is aimed at detecting and classifying 3D moving objects for security control of unmanned automatic railway stations. Most common approaches are based on active sensors like optical barriers or laser scanning devices. The proposed approach, named 3DMODS, is based on stereo vision technology, using a prediction-verification paradigm. Adaptive change detection is performed at the video rate to detect immediately moving objects in the scene. Object features are collected by "scanning" the scene with different parallel planes at variable height, to verify the volumetric consistency of the detected object. A prediction of stereo correspondence is performed, using homographic transformation on the set of predefined 3D planes, to verify whether the detected change is really a moving 3D object with a significant size, or just a phantom caused by shadows or highlights. A simple classification scheme is currently implemented to decide for an alarm candidate in case of relevant object size, but much more complex and flexible solutions are possible, to recognize all the relevant objects in the scene and achieve much more robust alarm detection performance.
3DMODS: 3D移动障碍物检测系统
该系统旨在为无人驾驶自动火车站的安全控制提供三维运动物体的检测和分类。最常见的方法是基于有源传感器,如光学屏障或激光扫描设备。该方法被命名为3DMODS,基于立体视觉技术,使用预测-验证范式。自适应变化检测以视频速率执行,以检测场景中立即移动的物体。通过在不同高度的平行平面上对场景进行“扫描”,收集目标特征,验证被检测目标的体积一致性。通过对一组预定义的3D平面进行单向变换,对立体对应进行预测,以验证检测到的变化是否真的是一个具有显著尺寸的移动3D物体,还是仅仅是由阴影或高光引起的幻影。目前实现了一种简单的分类方案,用于在相关对象大小的情况下确定报警候选对象,但可能有更复杂和灵活的解决方案,以识别场景中的所有相关对象,并实现更鲁棒的报警检测性能。
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