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DiffGen: a data-driven framework for generating truncated differentials DiffGen:一个数据驱动的框架,用于生成截断的微分
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-16 DOI: 10.1007/s10489-025-06248-0
Mohamed Fadl Idris, Je Sen Teh, Mohd Najwadi Yusoff

Differential cryptanalysis involves searching for high-probability differential trails. Traditionally, this search requires the use of constraint solvers or dedicated algorithms. Data-driven methods that rely on machine learning are typically limited to constructing statistical distinguishers for specific ciphers. In this paper, we develop a data-driven approach to the differential search problem by introducing DiffGen, a fully data-driven truncated differential search framework. DiffGen employs a metaheuristic algorithm with an active S-box prediction machine learning model as its fitness function to identify potentially valid truncated differentials within a given range of active S-boxes. A second machine learning model then validates the identified truncated differentials. We demonstrate the effectiveness of the DiffGen framework on generalized Feistel ciphers as a case study. Our results show that DiffGen can effectively generate valid truncated differentials, particularly when using particle swarm optimization as a metaheuristic and a differential validation model based on a fully connected artificial neural network. We verified that 84% of the truncated differentials generated by DiffGen in this setting correspond to actual differential trails. Our findings highlight, for the first time, the feasibility of applying a data-driven approach to the differential search problem.

差分密码分析包括搜索高概率差分轨迹。传统上,这种搜索需要使用约束求解器或专用算法。依赖于机器学习的数据驱动方法通常仅限于为特定密码构建统计区分符。在本文中,我们通过引入DiffGen(一个完全数据驱动的截断差分搜索框架),开发了一种数据驱动的差分搜索问题的方法。DiffGen采用一种元启发式算法,将主动s盒预测机器学习模型作为适应度函数,在给定的主动s盒范围内识别潜在有效的截断微分。然后,第二个机器学习模型验证已识别的截断微分。我们以一个案例研究证明了DiffGen框架在广义费斯特尔密码上的有效性。我们的研究结果表明,DiffGen可以有效地生成有效的截断微分,特别是当使用粒子群优化作为元启发式和基于全连接人工神经网络的微分验证模型时。我们验证了在这种设置下由DiffGen生成的截断的微分中有84%对应于实际的微分轨迹。我们的发现首次强调了将数据驱动方法应用于差分搜索问题的可行性。
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引用次数: 0
Symmetric perception and ordinal regression for detecting scoliosis natural image 脊柱侧凸自然图像的对称感知与有序回归检测
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-16 DOI: 10.1007/s10489-024-05849-5
Xiaojia Zhu, Rui Chen, Xiaoqi Guo, Zhiwen Shao, Yuhu Dai, Ming Zhang, Chuandong Lang

Scoliosis is one of the most common diseases in adolescents. Traditional screening methods for the scoliosis usually use radiographic examination, which requires certified experts with medical instruments and brings the radiation risk. Considering such requirement and inconvenience, we propose to use natural images of the human back for wide-range scoliosis screening, which is a challenging problem. In this paper, we notice that the human back has a certain degree of symmetry, and asymmetrical human backs are usually caused by spinal lesions. Besides, scoliosis severity levels have ordinal relationships. Taking inspiration from this, we propose a dual-path scoliosis detection network with two main modules: symmetric feature matching module (SFMM) and ordinal regression head (ORH). Specifically, we first adopt a backbone to extract features from both the input image and its horizontally flipped image. Then, we feed the two extracted features into the SFMM to capture symmetric relationships. Finally, we use the ORH to transform the ordinal regression problem into a series of binary classification sub-problems. Extensive experiments demonstrate that our approach outperforms state-of-the-art methods as well as human performance, which provides a promising and economic solution to wide-range scoliosis screening. In particular, our method achieves accuracies of 95.11% and 81.46% in estimation of general severity level and fine-grained severity level of the scoliosis, respectively.

脊柱侧凸是青少年最常见的疾病之一。传统的脊柱侧凸筛查方法通常采用影像学检查,这需要有资质的专家和医疗器械,并带来辐射风险。考虑到这种要求和不便,我们建议使用人体背部的自然图像进行大范围的脊柱侧凸筛查,这是一个具有挑战性的问题。在本文中,我们注意到人类的背部具有一定的对称性,而不对称的人类背部通常是由脊柱病变引起的。此外,脊柱侧凸的严重程度具有顺序关系。受此启发,我们提出了一种双路径脊柱侧凸检测网络,该网络包含两个主要模块:对称特征匹配模块(SFMM)和有序回归头(ORH)。具体来说,我们首先采用主干提取输入图像及其水平翻转图像的特征。然后,我们将两个提取的特征输入到SFMM中以捕获对称关系。最后,我们利用ORH将有序回归问题转化为一系列二值分类子问题。大量的实验表明,我们的方法优于最先进的方法以及人类的表现,这为大范围脊柱侧凸筛查提供了一个有前途和经济的解决方案。特别是,我们的方法在估计脊柱侧凸的一般严重程度和细粒度严重程度方面分别达到95.11%和81.46%的准确率。
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引用次数: 0
Cross-project defect prediction based on autoencoder with dynamic adversarial adaptation 基于动态对抗自适应自编码器的跨项目缺陷预测
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-15 DOI: 10.1007/s10489-024-06087-5
Wen Zhang, Jiangpeng Zhao, Guangjie Qin, Song Wang

Cross-project defect prediction enables a target software project with limited defect data to build a defect prediction model by leveraging abundant data in the source project. However, existing methods of cross-project defect prediction ignore the relative importance of global and local distributions in learning project-invariant feature spaces. This paper proposes a novel approach for cross-project defect prediction called Adan (autoencoder with dynamic adversarial adaptation) to dynamically adjust a project-invariant feature space by aligning global and local distributions simultaneously with adversarial learning. Specifically, the au-encoder was adopted to produce a latent space used as a project-invariant feature space for source and target artifacts. Global and local discriminators were used to adjust the latent space to ensure that representations of source and target artifacts in the project-invariant feature space have approximate global distribution and local distribution, respectively. The prediction model for the target artifacts was then trained using representations of the source artifacts in the project-invariant feature space. Experiments on four open-source projects with 12 pairs of tasks on cross-project defect prediction demonstrated that the proposed Adan approach outperformed state-of-the-art techniques, with an average improvement of 8.42% in terms of AUC.

跨项目缺陷预测使具有有限缺陷数据的目标软件项目能够通过利用源项目中的丰富数据来构建缺陷预测模型。然而,现有的跨项目缺陷预测方法忽略了全局分布和局部分布在学习项目不变特征空间中的相对重要性。本文提出了一种新的跨项目缺陷预测方法,称为Adan(动态对抗性自适应自编码器),该方法通过对抗性学习同时对齐全局和局部分布来动态调整项目不变特征空间。具体来说,采用au编码器产生潜在空间,作为源和目标工件的项目不变特征空间。利用全局鉴别器和局部鉴别器对潜在空间进行调整,确保源和目标工件在项目不变特征空间中的表示分别具有近似的全局分布和局部分布。然后使用项目不变特征空间中源工件的表示来训练目标工件的预测模型。在4个有12对跨项目缺陷预测任务的开源项目中进行的实验表明,提出的Adan方法优于目前最先进的技术,在AUC方面平均提高了8.42%。
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引用次数: 0
Time optimal trajectory planning of robotic arm based on improved sand cat swarm optimization algorithm 基于改进沙猫群优化算法的机械臂时间最优轨迹规划
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-15 DOI: 10.1007/s10489-024-06124-3
Zhenkun Lu, Zhichao You, Binghan Xia

In order to address the issue of automatic charging for electric vehicles, a hanging automatic charging system was proposed, with a particular focus on the time-optimal trajectory planning of the robotic arm within the system. Additionally, a multi-strategy improved Sand Cat Swarm Optimization Algorithm (YSCSO) was put forth as a potential solution. The 0805A six-axis manipulator was selected as the research object, and a kinematic model was constructed using the D-H parameter method. The 5-7-5 polynomial interpolation function was proposed and solved to construct the motion trajectory of the robotic arm joint. The cubic chaos-refraction inverse learning, introduced to initialize the population based on the sand cat swarm algorithm SCSO, balances the relationship between the elite pool weighted guided search behavior and the spiral Lévy flight predation behavior through the use of a dynamic nonlinear sensitivity range. Furthermore, the vigilance behavior mechanism of the sand cat was increased to improve the overall optimization performance of the algorithm. The proposed method was applied to 36 benchmark functions of global optimization, and the improvement strategy, convergence behavior, population diversity, exploration, and development of the algorithm were experimentally analyzed. The results demonstrated that the proposed method exhibited superior performance, with 80.86% of the test results significantly different from those of the comparison algorithm. Three constrained mechanical design optimization problems were employed to assess the algorithm’s practicality in engineering applications. Subsequently, the algorithm was applied to the optimal trajectory planning of a robotic arm, resulting in a significant reduction in the optimized joint motion time, a smooth and continuous kinematic curve devoid of abrupt changes, and a 42.72% reduction in motion time. These findings further substantiate the theoretical feasibility and superiority of the algorithm in addressing engineering challenges.

为了解决电动汽车自动充电问题,提出了一种悬挂式自动充电系统,重点研究了系统内机械臂的时间最优轨迹规划。此外,提出了一种改进的多策略沙猫群优化算法(YSCSO)作为潜在的解决方案。以0805A六轴机械手为研究对象,采用D-H参数法建立了其运动学模型。提出并求解5-7-5多项式插值函数来构造机械臂关节的运动轨迹。在沙猫群算法SCSO的基础上,引入三次混沌折射逆学习来初始化种群,利用动态非线性灵敏度范围平衡精英池加权制导搜索行为与螺旋lsamvy飞行捕食行为之间的关系。进一步增加沙猫的警戒行为机制,提高算法的整体优化性能。将该方法应用于36个全局优化基准函数,并对算法的改进策略、收敛行为、种群多样性、探索和发展进行了实验分析。结果表明,该方法具有较好的性能,80.86%的测试结果与比较算法有显著性差异。通过三个约束机械设计优化问题来评估该算法在工程应用中的实用性。将该算法应用于机械臂的最优轨迹规划,优化后的关节运动时间明显缩短,运动曲线光滑连续,无突变,运动时间缩短42.72%。这些发现进一步证实了该算法在解决工程挑战方面的理论可行性和优越性。
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引用次数: 0
Counterfactual regret minimization for the safety verification of autonomous driving 自动驾驶安全验证的反事实遗憾最小化
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-06194-3
Yong Wang, Pengchao Sun, Daifeng Zhang, Yanqiang Li

Rare safety-critical events remain a major challenge in autonomous vehicle testing. This paper proposes to use game theory to build a novel testing environment for autonomous vehicles. In this environment, a virtual agent based on counterfactual minimization (CFR) is used to accelerate testing and validate the safety performance of autonomous vehicles. The virtual agent updates the adversarial policies to be enforced by continuously accumulating regret values, thus increasing the probability of security-critical events occurring during the testing process. Finally, recognized metrics such as Time-to-Collision (TTC) and Minimum Safe Distance Factor (MSDF) are introduced to assess the quality of the scenario. Experimental results show that the virtual agent based on counterfactual minimization explicitly generates more safety-critical scenarios and accelerates the evaluation process by multiple orders of magnitude ((10^{3}) times faster).

罕见的安全关键事件仍然是自动驾驶汽车测试的主要挑战。本文提出利用博弈论构建一种新型的自动驾驶汽车测试环境。在这种环境下,采用基于反事实最小化(CFR)的虚拟代理来加速自动驾驶汽车的测试和验证安全性能。虚拟代理通过不断累积后悔值来更新要执行的对抗策略,从而增加测试过程中发生安全关键事件的概率。最后,引入了碰撞时间(TTC)和最小安全距离系数(MSDF)等公认的度量来评估场景的质量。实验结果表明,基于反事实最小化的虚拟代理显式地生成了更多的安全关键场景,并将评估过程加快了多个数量级((10^{3})倍)。
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引用次数: 0
STNeRF: symmetric triplane neural radiance fields for novel view synthesis from single-view vehicle images STNeRF:用于单视图车辆图像的新型视图合成的对称三面神经辐射场
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-06005-9
Zhao Liu, Zhongliang Fu, Gang Li, Jie Hu, Yang Yang

This paper presents STNeRF, a method for synthesizing novel views of vehicles from single-view 2D images without the need for 3D ground truth data, such as point clouds, depth maps, CAD models, etc., as prior knowledge. A significant challenge in this task arises from the characteristics of CNNs and the utilization of local features can lead to a flattened representation of the synthesized image when training and validation with images from a single viewpoint. Many current methodologies tend to overlook local features and rely on global features throughout the entire reconstruction process, potentially resulting in the loss of fine-grained details in the synthesized image. To tackle this issue, we introduce Symmetric Triplane Neural Radiance Fields (STNeRF). STNeRF employs a triplane feature extractor with spatially aware convolution to extend 2D image features into 3D. This decouples the appearance component, which includes local features, and the shape component, which consists of global features, and utilizes them to construct a neural radiance field. These neural priors are then employed for rendering novel views. Furthermore, STNeRF leverages the symmetric properties of vehicles to liberate the appearance component from reliance on the original viewpoint and to align it with the symmetry of the target space, thereby enhancing the neural radiance field network’s ability to represent the invisible regions. The qualitative and quantitative evaluations demonstrate that STNeRF outperforms existing solutions in terms of both geometry and appearance reconstruction. More supplementary materials and the implementation code are available for access at the following link: https://github.com/ll594282475/STNeRF.

本文提出了STNeRF,这是一种从单视图2D图像合成车辆新视图的方法,无需将三维地面真实数据(如点云、深度图、CAD模型等)作为先验知识。该任务中的一个重大挑战来自cnn的特性,当从单一视点训练和验证图像时,局部特征的利用可能导致合成图像的扁平表示。目前许多方法在整个重建过程中往往忽略局部特征,而依赖全局特征,这可能导致合成图像中细粒度细节的丢失。为了解决这个问题,我们引入了对称三面神经辐射场(STNeRF)。STNeRF使用具有空间感知卷积的三平面特征提取器将2D图像特征扩展到3D。该方法将包含局部特征的外观分量和包含全局特征的形状分量解耦,并利用它们构建神经辐射场。然后利用这些神经先验来呈现新的视图。此外,STNeRF利用车辆的对称特性,将外观组件从对原始视点的依赖中解放出来,并使其与目标空间的对称性对齐,从而增强神经辐射场网络表示不可见区域的能力。定性和定量评估表明,STNeRF在几何形状和外观重建方面都优于现有的解决方案。更多的补充材料和实现代码可从以下链接获取:https://github.com/ll594282475/STNeRF。
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引用次数: 0
SSSA: low data sentiment analysis using boosting semi-supervised approach and deep feature learning network SSSA:基于增强半监督方法和深度特征学习网络的低数据情感分析
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-06071-z
Shima Rashidi, Jafar Tanha, Arash Sharifi, Mehdi Hosseinzadeh

Sentiment analysis is the process of determining the expressive direction of the user reviews. Recently, sentiment analysis gets more attention. However, low data sentiment analysis receives less attention. The existing works try to augment the samples to consider this issue. In this study, we have utilized a semi-supervised approach to propose a new approach for low-data sentiment analysis. To do so, we have utilized pre-trained XLNet as a feature extractor network to initialize the feature vector for each tweet. Next, these initial representations are fed into the embedding update module to map features into the new space by optimizing the contrastive loss. Then, we utilized a semi-supervised boosting method to assign pseudo labels to unlabeled data. The iteration between the semi-supervised module and the embedding update module is done until convergence is happened. During these iterations, the embedding update module propagates the error-correcting signals to a semi-supervised module. To evaluate the proposed approach, we have applied it to the SemEval2017dataset (task 4), Sentiment 140, and IMDB Movie Reviews. We have designed many different experiment settings to validate the proposed approach’s different modules. On SemEval2017dataset (task 4), we have got 75.9% and 77.1% in AvgRec and ({F}_{1}^{PN}) respectively. Also, when only 10% of the training samples as labeled samples are used, we get the 71.8% and 73.6% in AvgRec and ({F}_{1}^{PN}) respectively. The results show that our approach significantly improves with respect to the comparable methods. Also, on IMDB Movie Reviews and Sentiment 140, the proposed approach demonstrates improved performance compared to comparable methods.

情感分析是确定用户评论表达方向的过程。最近,情绪分析越来越受到关注。然而,低数据情感分析受到的关注较少。现有的工作试图增加样本来考虑这个问题。在本研究中,我们利用半监督方法提出了一种低数据情感分析的新方法。为此,我们利用预训练的XLNet作为特征提取器网络来初始化每条tweet的特征向量。接下来,将这些初始表示输入到嵌入更新模块中,通过优化对比损失将特征映射到新的空间中。然后,我们利用半监督增强方法为未标记数据分配伪标签。在半监督模块和嵌入更新模块之间进行迭代,直到收敛。在这些迭代过程中,嵌入的更新模块将纠错信号传播给半监督模块。为了评估所提出的方法,我们将其应用于SemEval2017dataset (task 4)、Sentiment 140和IMDB Movie Reviews。我们设计了许多不同的实验设置来验证所提出的方法的不同模块。在SemEval2017dataset(任务4)上,我们得到了75.9% and 77.1% in AvgRec and ({F}_{1}^{PN}) respectively. Also, when only 10% of the training samples as labeled samples are used, we get the 71.8% and 73.6% in AvgRec and ({F}_{1}^{PN}) respectively. The results show that our approach significantly improves with respect to the comparable methods. Also, on IMDB Movie Reviews and Sentiment 140, the proposed approach demonstrates improved performance compared to comparable methods.
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引用次数: 0
TSHDNet: temporal-spatial heterogeneity decoupling network for multi-mode traffic flow prediction TSHDNet:多模式交通流时空异质性解耦网络
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-06218-y
Mei Wu, Wenchao Weng, Xinran Wang, Dewen Seng

Given the intricate spatial dependencies and dynamic trends among diverse road segments, the prediction of spatio-temporal traffic flow data presents a formidable challenge. To address this challenge within the complexity of urban multi-mode transportation systems, this paper introduces an innovative solution. Anchored by the TSHDNet framework, the proposed methodology presents a novel spatio-temporal heterogeneous decoupling network that adeptly captures the inherent relationships between traffic patterns and temporal-spatial fluctuations. By seamlessly integrating temporal and nodal embeddings, dynamic graph learning, and multi-scale representation modules, TSHDNet demonstrates remarkable efficacy in unraveling the subtle dynamics of traffic flow. Empirical evaluations and ablation experiments conducted on four real-world datasets affirm the framework’s capability and the effectiveness of the decoupling approach.The source codes are available at: https://github.com/MeiWu2/TSHDNet.git

鉴于不同路段之间复杂的空间依赖关系和动态趋势,交通流的时空预测面临着巨大的挑战。为了在复杂的城市多模式交通系统中解决这一挑战,本文介绍了一种创新的解决方案。该方法以TSHDNet框架为基础,提出了一种新颖的时空异构解耦网络,能够熟练地捕捉交通模式与时空波动之间的内在关系。通过无缝集成时间和节点嵌入、动态图学习和多尺度表示模块,TSHDNet在揭示交通流的微妙动态方面表现出显著的效果。在四个真实数据集上进行的实证评估和消融实验证实了该框架的能力和解耦方法的有效性。源代码可从https://github.com/MeiWu2/TSHDNet.git获得
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引用次数: 0
A learning artificial visual system and its application to orientation detection 一种学习型人工视觉系统及其在方向检测中的应用
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-05991-0
Tianqi Chen, Yuki Kobayashi, Chenyang Yan, Zhiyu Qiu, Yuxiao Hua, Yuki Todo, Zheng Tang

This paper proposes a learning artificial visual system, the Learning Dendritic Model Artificial Visual System (DModel-AVS), for orientation detection inspired by biological visual mechanisms. The DModel-AVS consists of two layers: local orientation detection neurons layer and global orientation detection neurons layer. The local neurons detect local features of an image, utilizing dendrite model neurons. The global neurons are designed to implement global features of the image by summing the outputs of the local dendritic neurons. The backpropagation-based learning is performed only to the dendritic neurons. The effectiveness of the DModel-AVS is evaluated through several experiments comparing it with various convolutional neural network (CNN)-based orientation detection systems. Results show that the DModel-AVS is a more biologically plausible and effective solution to orientation detection, with higher accuracy, and lower learning costs. The proposed system has practical applications in various fields such as computer vision and robotics.

本文提出了一种学习型人工视觉系统,即学习树突状模型人工视觉系统(DModel-AVS),用于受生物视觉机制启发的方向检测。DModel-AVS包括两层:局部方向检测神经元层和全局方向检测神经元层。局部神经元利用树突模型神经元检测图像的局部特征。全局神经元通过对局部树突神经元的输出求和来实现图像的全局特征。基于反向传播的学习仅对树突神经元进行。通过将DModel-AVS与各种基于卷积神经网络(CNN)的方向检测系统进行比较,对其有效性进行了评价。结果表明,DModel-AVS具有更高的精度和更低的学习成本,是一种生物学上更合理、更有效的方向检测解决方案。该系统在计算机视觉、机器人等领域具有实际应用价值。
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引用次数: 0
Autonomous navigation of UAV in complex environment : a deep reinforcement learning method based on temporal attention 复杂环境下无人机自主导航:一种基于时间注意的深度强化学习方法
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-01-14 DOI: 10.1007/s10489-024-06036-2
Shuyuan Liu, Shufan Zou, Xinghua Chang, Huayong Liu, Laiping Zhang, Xiaogang Deng

With the increasing demand for Unmanned Aerial Vehicles (UAVs) in both military and civil applications, the ability for UAVs to automatically avoid obstacles and navigate to specific destinations has been receiving growing attention. However, most current methods focus on environments where global information is available or both destination and obstacles are static, which are not suitable for dense, dynamic, complex real-time tasks. Therefore, we propose a novel autonomous navigation method based on Deep Reinforcement Learning (DRL), which is suitable for more complex environments. Based on the Soft Actor-Critic (SAC) algorithm, this method incorporates changes of the state space into network input with a temporal attention mechanism, which allows UAVs to adaptively extract key information from historical environments while maintaining sensitivity to the current environment. We establish a visualized two-dimensional navigation task environment and design different simulation tests to evaluate its the performance and generalization. Results show that compared to baselines, our algorithm can achieve higher average rewards and more stable convergence after training in a static multi-obstacle environment, and can demonstrate better performance in environments featuring multiple obstacles of varying numbers, sizes, and speeds, thereby achieving a balance between task completion efficiency and security.

随着军事和民用领域对无人飞行器(UAV)的需求日益增长,无人飞行器自动避开障碍物并导航至特定目的地的能力日益受到关注。然而,目前的大多数方法都集中在有全局信息或目的地和障碍物都是静态的环境中,不适合密集、动态、复杂的实时任务。因此,我们提出了一种基于深度强化学习(DRL)的新型自主导航方法,它适用于更复杂的环境。该方法以软行为批判(Soft Actor-Critic, SAC)算法为基础,通过时间关注机制将状态空间的变化纳入网络输入,从而使无人机能够自适应地从历史环境中提取关键信息,同时保持对当前环境的敏感性。我们建立了一个可视化的二维导航任务环境,并设计了不同的模拟测试来评估其性能和通用性。结果表明,与基线算法相比,我们的算法在静态多障碍物环境中经过训练后可以获得更高的平均奖励和更稳定的收敛性,并且在具有不同数量、大小和速度的多个障碍物的环境中可以表现出更好的性能,从而实现任务完成效率和安全性之间的平衡。
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引用次数: 0
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Applied Intelligence
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