In this paper, we present a novel method for integrating 3D LiDAR depth measurements into the existing ORB-SLAM3 by building upon the RGB-D mode. We propose and compare two methods of depth map generation: conventional computer vision methods, namely an inverse dilation operation, and a supervised deep learning-based approach. We integrate the former directly into the ORB-SLAM3 framework by adding a so-called RGB-L (LiDAR) mode that directly reads LiDAR point clouds. The proposed methods are evaluated on the KITTI Odometry dataset and compared to each other and the standard ORB-SLAM3 stereo method. We demonstrate that, depending on the environment, advantages in trajectory accuracy and robustness can be achieved. Furthermore, we demonstrate that the runtime of the ORB-SLAM3 algorithm can be reduced by more than 40 % compared to the stereo mode. The related code for the ORB-SLAM3 RGB-L mode will be available as open-source software under https://github.com/TUMFTM/ORB SLAM3 RGBL.
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机器人定位是使用地图和传感器测量结果找到机器人姿势的反问题。近年来,可逆神经网络(INNS)成功地解决了各个领域的模棱两可的反问题。本文提出了一个解决旅馆本地化问题的框架。我们设计了一个在逆路径中提供隐式映射表示形式的旅馆。通过对评估中的潜在空间进行采样,局部\ _inn输出机器人以协方差构成,可用于估计不确定性。我们表明,本地\ _inn的本地化性能与延迟较低的当前方法相当。我们使用训练集的外观显示了从本地\ _inn的详细的2D和3D地图重建。我们还使用本地\ _inn提供了全球本地化算法来解决绑架问题。
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深度强化学习(DRL)是一种仅从演示和经验中学习机器人控制政策的有前途的方法。为了涵盖机器人的整个动态行为,DRL训练是通常在仿真环境中得出的主动探索过程。尽管这种模拟培训廉价且快速,但将DRL算法应用于现实世界的设置很困难。如果对代理进行训练直到它们在模拟中安全执行,则由于模拟动力学和物理机器人之间的差异引起的SIM到真实差距,将其传输到物理系统很困难。在本文中,我们提出了一种在线培训DRL代理的方法,可以使用基于模型的安全主管在实体车辆上自动驾驶。我们的解决方案使用监督系统检查代理选择的操作是安全还是不安全,并确保在车辆上始终采取安全措施。这样,我们可以在安全,快速,有效地训练DRL算法的同时绕过SIM到现实的问题。我们提供各种现实世界实验,在线培训一辆小型实体车辆,可以自动驾驶,没有事先模拟培训。评估结果表明,我们的方法在未崩溃的同时提高了样品效率的训练代理,并且受过训练的代理比在模拟中训练的代理表现出更好的驾驶性能。
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尽管机器人学课程在高等教育方面已建立,但这些课程通常专注于理论,有时缺乏对开发,部署和将软件应用于真实硬件的技术的系统覆盖。此外,大多数用于机器人教学的硬件平台是针对中学水平的年轻学生的低级玩具。为了解决这一差距,开发了一个自动驾驶汽车硬件平台,称为第1 f1 f1tth,用于教授自动驾驶系统。本文介绍了以“赛车”和替换考试的竞赛为主题的各种教育水平教学模块和软件堆栈。第1辆车提供了一个模块化硬件平台及其相关软件,用于教授自动驾驶算法的基础知识。从基本的反应方法到高级计划算法,教学模块通过使用第1辆车的自动驾驶来增强学生的计算思维。第1辆汽车填补了研究平台和低端玩具车之间的空白,并提供了学习自主系统中主题的动手经验。多年的四所大学为他们的学期本科和研究生课程采用了教学模块。学生反馈用于分析第1个平台的有效性。超过80%的学生强烈同意,硬件平台和模块大大激发了他们的学习,而超过70%的学生强烈同意,硬件增强了他们对学科的理解。调查结果表明,超过80%的学生强烈同意竞争激励他们参加课程。
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自主赛车奖的代理商对反对者的行为做出反应,并以敏捷的操纵向沿着赛道前进,同时惩罚过度侵略性和过度保守的代理商。了解其他代理的意图对于在对抗性多代理环境中部署自主系统至关重要。当前的方法要么过分简化代理的动作空间的离散化,要么无法识别行动的长期影响并成为近视。我们的工作重点是应对这两个挑战。首先,我们提出了一种新颖的降低方法,该方法封装了不同的代理行为,同时保留了代理作用的连续性。其次,我们将两种代理赛车游戏制定为遗憾的最小化问题,并通过遗憾的预测模型为可行的反事实遗憾最小化提供了解决方案。最后,我们在规模的自动驾驶汽车上实验验证了我们的发现。我们证明,使用拟议的游戏理论规划师使用代理表征与客观空间显着提高了对不同对手的获胜率,并且在看不见的环境中,改进可以转移到看不见的对手。
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Machine learning models are typically evaluated by computing similarity with reference annotations and trained by maximizing similarity with such. Especially in the bio-medical domain, annotations are subjective and suffer from low inter- and intra-rater reliability. Since annotations only reflect the annotation entity's interpretation of the real world, this can lead to sub-optimal predictions even though the model achieves high similarity scores. Here, the theoretical concept of Peak Ground Truth (PGT) is introduced. PGT marks the point beyond which an increase in similarity with the reference annotation stops translating to better Real World Model Performance (RWMP). Additionally, a quantitative technique to approximate PGT by computing inter- and intra-rater reliability is proposed. Finally, three categories of PGT-aware strategies to evaluate and improve model performance are reviewed.
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Quaternion valued neural networks experienced rising popularity and interest from researchers in the last years, whereby the derivatives with respect to quaternions needed for optimization are calculated as the sum of the partial derivatives with respect to the real and imaginary parts. However, we can show that product- and chain-rule does not hold with this approach. We solve this by employing the GHRCalculus and derive quaternion backpropagation based on this. Furthermore, we experimentally prove the functionality of the derived quaternion backpropagation.
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Neuromorphic systems require user-friendly software to support the design and optimization of experiments. In this work, we address this need by presenting our development of a machine learning-based modeling framework for the BrainScaleS-2 neuromorphic system. This work represents an improvement over previous efforts, which either focused on the matrix-multiplication mode of BrainScaleS-2 or lacked full automation. Our framework, called hxtorch.snn, enables the hardware-in-the-loop training of spiking neural networks within PyTorch, including support for auto differentiation in a fully-automated hardware experiment workflow. In addition, hxtorch.snn facilitates seamless transitions between emulating on hardware and simulating in software. We demonstrate the capabilities of hxtorch.snn on a classification task using the Yin-Yang dataset employing a gradient-based approach with surrogate gradients and densely sampled membrane observations from the BrainScaleS-2 hardware system.
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Osteoarthritis (OA) is the most prevalent chronic joint disease worldwide, where knee OA takes more than 80% of commonly affected joints. Knee OA is not a curable disease yet, and it affects large columns of patients, making it costly to patients and healthcare systems. Etiology, diagnosis, and treatment of knee OA might be argued by variability in its clinical and physical manifestations. Although knee OA carries a list of well-known terminology aiming to standardize the nomenclature of the diagnosis, prognosis, treatment, and clinical outcomes of the chronic joint disease, in practice there is a wide range of terminology associated with knee OA across different data sources, including but not limited to biomedical literature, clinical notes, healthcare literacy, and health-related social media. Among these data sources, the scientific articles published in the biomedical literature usually make a principled pipeline to study disease. Rapid yet, accurate text mining on large-scale scientific literature may discover novel knowledge and terminology to better understand knee OA and to improve the quality of knee OA diagnosis, prevention, and treatment. The present works aim to utilize artificial neural network strategies to automatically extract vocabularies associated with knee OA diseases. Our finding indicates the feasibility of developing word embedding neural networks for autonomous keyword extraction and abstraction of knee OA.
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Data-centric artificial intelligence (data-centric AI) represents an emerging paradigm emphasizing that the systematic design and engineering of data is essential for building effective and efficient AI-based systems. The objective of this article is to introduce practitioners and researchers from the field of Information Systems (IS) to data-centric AI. We define relevant terms, provide key characteristics to contrast the data-centric paradigm to the model-centric one, and introduce a framework for data-centric AI. We distinguish data-centric AI from related concepts and discuss its longer-term implications for the IS community.
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