Commonly, SLAM algorithms are focused on a static environment, however, there are several scenes where dynamic objects are present. This work presents the STDyn-SLAM an image feature-based SLAM system working on dynamic environments using a series of sub-systems, like optic flow, orb features extraction, visual odometry, and convolutional neural networks to discern moving objects in the scene. The neural network is used to support object detection and segmentation to avoid erroneous maps and wrong system localization. The STDyn-SLAM employs a stereo pair and is developed for outdoor environments. Moreover, the processing time of the proposed system is fast enough to run in real-time as it was demonstrated through the experiments given in real dynamic outdoor environments. Further, we compare our SLAM with state-of-the-art methods achieving promising results.
翻译:通常,SLM算法侧重于静态环境,然而,有几种有动态物体存在的场景。这项工作展示了STDyn-SLAM一个基于图像特征的SLAM系统,该系统利用一系列子系统,如光流、圆形特征提取、视觉观察仪和进化神经网络,在动态环境中工作,以辨别现场移动的物体。神经网络用来支持物体探测和分割,以避免错误的地图和错误的系统定位。STDyn-SLAM使用立体配对,为室外环境开发。此外,拟议的系统的处理时间足够快,可以实时运行,正如在真实动态室外环境中进行的实验所显示的那样。此外,我们比较了我们的SLMM与最先进的方法,以取得有希望的结果。