Highly accurate 3D object detection is critical for autonomous driving and robotic sensing system. However, some objects with few foreground points significantly affect the accuracy of 3D object detection. As the netw...
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Monocular RGB-based category-level object pose estimation is more practical and cost-effective for robotics. However, existing methods do not fully exploit the rich semantic and contextual information in multimodal da...
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Continuous-variable quantum key distribution (CVQKD) is a mature technology that can theoretically provide an unconditional security guarantee. However, a practical CVQKD system may be vulnerable to various quantum ha...
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Continuous-variable quantum key distribution (CVQKD) is a mature technology that can theoretically provide an unconditional security guarantee. However, a practical CVQKD system may be vulnerable to various quantum hacking attacks due to imperfect devices and insufficient assumptions. In this paper, we propose a universal defense strategy called a machine-learning-based attack detection scheme (MADS). Leveraging the combined advantages of density-based spatial clustering of applications with noise (DBSCAN) and multiclass support vector machines (MCSVMs), MADS demonstrates remarkable effectiveness in detecting quantum hacking attacks. Specifically, we first establish a set of attack-related features to extract feature vectors. These vectors are then utilized as input data for DBSCAN to identify and remove any noise or outliers. Finally, the trained MCSVMs are employed to classify and predict the processed data. The predicted results can immediately determine whether or not to generate a final secret key. Simulation results show that the proposed MADS can efficiently detect most quantum hacking attacks and revise the overestimated secret key rates caused by a CVQKD system without any defense strategy to obtain a tighter security bound.
This paper addresses the problem of formation control for a quadrotor swarm (QS) system with directed graph topology under external environmental disturbances and unreliable internal state acquisition. The proposed di...
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This paper addresses the problem of formation control for a quadrotor swarm (QS) system with directed graph topology under external environmental disturbances and unreliable internal state acquisition. The proposed distributed robust control framework, based on a gemetric controller, incorporates ${\mathcal {L}}_control$ adaptive controllers and differentiator systems. First, the geometric formation controller is designed to implement the formation control of the nominal system. Then, ${\mathcal {L}}_control$ adaptive controllers are designed separately for each quadrotor’s position loop and attitude loop subsystems to address the effects of uncertainties such as external time-varying disturbances (matched and unmatched disturbances) and different mass variations of quadrotors. Furthermore, the differentiator system is devised to accurately estimate the higher-order derivatives of the non-directly-measurable velocity information and the virtual translation control signal, which enhances system accuracy while reducing computational complexity. The Lyapunov stability theory is employed to analyze the stability of the closed-loop system. Finally, the effectiveness and exceptional performance of this approach in QS formation control were validated through numerical simulation and experimental results. Note to Practitioners—The inspiration for this article comes from the issue of formation control in a cluster of quadrotor drones, which is also applicable to formation control in other types of drones. In this paper, a formation control algorithm based on ${\mathcal {L}}_control$ adaptive control strategy and arbitrary-order differentiation is designed. This algorithm can address not only the issue of time-varying wind disturbances frequently encountered during quadrotor drone flights but also the effects of unpredictable velocities and inconsistent masses of quadrotor drones. The disturbance rejection capability of this scheme enables quadrotor drones to be applied more safely and r
Interactive control is very important for unmanned swarm systems to understand human intentions and execute tasks. However, traditional interactive control usually uses a keyboard, mouse, or remote controller, which i...
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ISBN:
(纸本)9781665481106
Interactive control is very important for unmanned swarm systems to understand human intentions and execute tasks. However, traditional interactive control usually uses a keyboard, mouse, or remote controller, which is not intuitive and convenient enough. This paper proposes a natural interaction control method based on gesture recognition for unmanned swarm systems. First, considering the real-time requirement of interactive control, the YOLOv5 algorithm is improved by replacing the original GIoU loss function with the DIoU loss function to improve the performance of the algorithm. Then, according to the interactive control requirements of unmanned swarm systems, the corresponding gesture database is established. Finally, the AirSim platform is used to build the simulation system, and the interactive control based on gesture recognition is tested and verified. The experimental results show that the recognition accuracy of the control intention is 97% and the response time is approximately 0.027 s, which can realize the interactive control of unmanned swarm systems.
Dynamic jumping on high platforms and over gaps differentiates legged robots from wheeled counterparts. Compared to walking on rough terrains, dynamic locomotion on abrupt surfaces requires fusing proprioceptive and e...
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Multiple mobile robot systems (MMRSs) have great potential in various fields and their reliable application depends on accurate formation among robots. Focusing on the formation problem of MMRSs, a posture-based adapt...
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Multiple mobile robot systems (MMRSs) have great potential in various fields and their reliable application depends on accurate formation among robots. Focusing on the formation problem of MMRSs, a posture-based adaptive iterative learning control scheme (PB-AILC) is proposed in this paper. Firstly, the leader-follower formation model is built. Then PB-AILC scheme is introduced to optimize the control linear and angular velocity of follower robots at each iteration based on the robots’ global posture only, guaranteeing that followers can steadily track their leader with prescribed relative distance and orientation. Meanwhile, we analyze its feasibility mathematically. Finally, numerical simulations illustrate the validity of the PB-AILC scheme and we compare PB-AILC with an iterative learning control (ILC) method to demonstrate its superiority.
The widely deployed power transmission line expedites developing the age of electricity. Thus, it is necessary to maintain a power system with a great quantity of manpower and material resources, especially for crucia...
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Homography estimation is a crucial problem in computer vision, which aims to provide an optimal transformation matrix for aligning images captured from different viewpoints. Current methods extract shallow features fr...
Homography estimation is a crucial problem in computer vision, which aims to provide an optimal transformation matrix for aligning images captured from different viewpoints. Current methods extract shallow features from image pairs and introduce learnable mask modules to improve homography estimation performance. However, they struggle to capture long-term dependencies between features and comprehend the global structures of image features. A deep unsupervised homography learning framework is proposed in this paper, consisting of a weight-sharing feature extraction network and a homography estimation network based on the Transformer model. The former extracts the local features of images, while the latter learns the correlation between them and understands the global features of images, enabling the algorithm to better estimate the homography of unaligned images. Experimental results demonstrate that the proposed method outperforms the advanced methods for estimating homography matrices in the CA-Unsupervised dataset.
Maneuvering target tracking of Unmanned Aerial Vehicle(UAV) in cluttered environments is a challenging issue owing to the unknown motion intention of the target and the complex moving environments. As the complexity o...
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