Spatial attention

空间注意力
  • 文章类型: Journal Article
    有证据表明,皮层下结构在高级认知功能中起作用,例如空间注意力的分配。虽然人类有大量证据表明后α波段振荡是由空间注意力调制的,关于皮质下区域如何促成这些振荡调制,特别是在不同的认知挑战条件下。在这项研究中,我们结合了MEG和结构MRI数据,通过采用具有不同感知负荷水平的提示空间注意力范式,研究了皮质下结构在控制注意力资源分配中的作用.我们询问丘脑和基底神经节的体积测量的半球偏侧化是否可以预测α带功率的半球调制。苍白球的横向不对称,尾状核,和丘脑预测后验α振荡的注意力相关调制。当感知负荷被施加到目标上并且牵张器是显着的尾状核不对称性时,可以预测α带调制。当任一目标具有高负载时,苍白球可以预测α带调制,或者分心者很突出,但不是两者都有。最后,当任务的两个组成部分都没有感知要求时,丘脑的不对称性预测了α带调制。除了提供对皮层下电路的新见解,用空间注意力控制阿尔法振荡,我们的发现也可能具有临床应用价值.我们提供了一个框架,可用于检测与神经系统疾病相关的皮层下区域的结构变化如何反映在振荡脑活动的调节中。
    Evidence suggests that subcortical structures play a role in high-level cognitive functions such as the allocation of spatial attention. While there is abundant evidence in humans for posterior alpha band oscillations being modulated by spatial attention, little is known about how subcortical regions contribute to these oscillatory modulations, particularly under varying conditions of cognitive challenge. In this study, we combined MEG and structural MRI data to investigate the role of subcortical structures in controlling the allocation of attentional resources by employing a cued spatial attention paradigm with varying levels of perceptual load. We asked whether hemispheric lateralization of volumetric measures of the thalamus and basal ganglia predicted the hemispheric modulation of alpha-band power. Lateral asymmetry of the globus pallidus, caudate nucleus, and thalamus predicted attention-related modulations of posterior alpha oscillations. When the perceptual load was applied to the target and the distractor was salient caudate nucleus asymmetry predicted alpha-band modulations. Globus pallidus was predictive of alpha-band modulations when either the target had a high load, or the distractor was salient, but not both. Finally, the asymmetry of the thalamus predicted alpha band modulation when neither component of the task was perceptually demanding. In addition to delivering new insight into the subcortical circuity controlling alpha oscillations with spatial attention, our finding might also have clinical applications. We provide a framework that could be followed for detecting how structural changes in subcortical regions that are associated with neurological disorders can be reflected in the modulation of oscillatory brain activity.
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  • 文章类型: Journal Article
    皮质深处结构大小的不对称解释了大脑中的α振荡如何对注意力的转移做出反应。
    Asymmetries in the size of structures deep below the cortex explain how alpha oscillations in the brain respond to shifts in attention.
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  • 文章类型: Journal Article
    我们学习环境中嵌入的规律性的能力是我们认知系统的一个基本方面。这种统计学习依赖于注意力吗?关于这个主题的研究很少,并且产生了不同的发现。在这项预先注册的研究中,我们研究了空间注意力在统计学习中的作用,特别是在学过的干扰物位置抑制中。这种现象是指在视觉搜索过程中,与低概率位置相比,参与者在高概率位置忽略显著干扰因素方面表现得更好,即在概率失衡停止后很长时间内,这种偏差会持续存在.参与者搜索形状单例目标,有时会出现颜色单例干扰物。在学习阶段,与低概率位置相比,彩色单例干扰物更可能出现在高概率位置。至关重要的是,我们通过让实验组在搜索显示之前将注意力集中在目标位置来操纵空间注意力,使用100%信息的空间前序,而对照组是中性的,无信息的提示。在随后的测试阶段,彩色单例干扰物同样可能出现在任何位置,并且没有提示。不出所料,中性线索组的结果重复了之前的发现.至关重要的是,对于信息提示组,当注意力从它转移时(在学习期间),来自干扰物的干扰是最小的,并且在测试期间没有观察到统计学习。审判间启动占了学习过程中发现的小统计学习效果。这些发现表明,视觉搜索中的统计学习需要注意。
    Our ability to learn the regularities embedded in our environment is a fundamental aspect of our cognitive system. Does such statistical learning depend on attention? Research on this topic is scarce and has yielded mixed findings. In this preregistered study, we examined the role of spatial attention in statistical learning, and specifically in learned distractor-location suppression. This phenomenon refers to the finding that during visual search, participants are better at ignoring a salient distractor at a high-probability location than at low-probability locations - a bias persisting long after the probability imbalance has ceased. Participants searched for a shape-singleton target and a color-singleton distractor was sometimes present. During the learning phase, the color-singleton distractor was more likely to appear in the high-probability location than in the low-probability locations. Crucially, we manipulated spatial attention by having the experimental group focus their attention on the target\'s location in advance of the search display, using a 100%-informative spatial precue, while the control group was presented with a neutral, uninformative cue. During the subsequent test phase, the color-singleton distractor was equally likely to appear at any location and there were no cues. As expected, the results for the neutral-cue group replicated previous findings. Crucially, for the informative-cue group, interference from the distractor was minimal when attention was diverted from it (during learning) and no statistical learning was observed during test. Intertrial priming accounted for the small statistical-learning effect found during learning. These findings show that statistical learning in visual search requires attention.
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  • 文章类型: Journal Article
    傅里叶重叠显微术(FPM)是一种基于光学原理的显微成像技术。它采用傅立叶光学来分离和组合来自样品的不同光学信息。然而,在成像过程中引入的噪声往往导致重建图像的分辨率较差。本文设计了一种基于残差局部混合网络的方法来提高傅立叶重叠重建图像的质量。通过将通道注意力和空间注意力纳入FPM重建过程,提高了网络重构的效率,减少了重构时间。此外,高斯扩散模型的引入进一步减少了相干伪影,提高了图像重建质量。对比实验结果表明,该网络具有较好的重建质量,在主观观察和客观定量评价方面都优于现有方法。
    Fourier Ptychographic Microscopy (FPM) is a microscopy imaging technique based on optical principles. It employs Fourier optics to separate and combine different optical information from a sample. However, noise introduced during the imaging process often results in poor resolution of the reconstructed image. This article has designed an approach based on a residual local mixture network to improve the quality of Fourier ptychographic reconstruction images. By incorporating channel attention and spatial attention into the FPM reconstruction process, the network enhances the efficiency of the network reconstruction and reduces the reconstruction time. Additionally, the introduction of the Gaussian diffusion model further reduces coherent artifacts and improves image reconstruction quality. Comparative experimental results indicate that this network achieves better reconstruction quality, and outperforming existing methods in both subjective observation and objective quantitative evaluation.
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  • 文章类型: Journal Article
    这项工作旨在通过开发用于实际临床CBCT投影数据的深度学习(DL)方法来改善有限角度(LA)锥形束计算机断层扫描(CBCT),这是第一个基于临床投影数据的LA-CBCT的可行性研究,据我们所知.在放射治疗(RT)中,CBCT通常用作患者设置的机载成像模态。与诊断性CT相比,CBCT具有较长的采集时间,例如,一个完整的360°旋转60秒,受到运动伪影的影响。因此,LA-CBCT,如果可以实现,对RT的目的非常感兴趣,除了辐射剂量外,它还按比例减少了扫描时间。然而,LA-CBCT遭受严重的楔形伪影和图像失真。针对真实的临床预测数据,我们已经探索了各种DL方法,例如图像/数据/混合域方法,并最终开发了一种所谓的结构增强注意力网络(SEA-Net)方法,该方法在我们实施的DL方法中具有来自临床投影数据的最佳图像质量。具体来说,提出的SEA-Net采用专门的结构增强子网络来促进纹理保存。观察到重建图像中楔形伪影的分布是不均匀的,空间注意模块用于强调相关区域,而忽略不相关区域,这导致更准确的纹理恢复。
    This work aims to improve limited-angle (LA) cone beam computed tomography (CBCT) by developing deep learning (DL) methods for real clinical CBCT projection data, which is the first feasibility study of clinical-projection-data-based LA-CBCT, to the best of our knowledge. In radiation therapy (RT), CBCT is routinely used as the on-board imaging modality for patient setup. Compared to diagnostic CT, CBCT has a long acquisition time, e.g., 60 seconds for a full 360° rotation, which is subject to the motion artifact. Therefore, the LA-CBCT, if achievable, is of the great interest for the purpose of RT, for its proportionally reduced scanning time in addition to the radiation dose. However, LA-CBCT suffers from severe wedge artifacts and image distortions. Targeting at real clinical projection data, we have explored various DL methods such as image/data/hybrid-domain methods and finally developed a so-called Structure-Enhanced Attention Network (SEA-Net) method that has the best image quality from clinical projection data among the DL methods we have implemented. Specifically, the proposed SEA-Net employs a specialized structure enhancement sub-network to promote texture preservation. Based on the observation that the distribution of wedge artifacts in reconstruction images is non-uniform, the spatial attention module is utilized to emphasize the relevant regions while ignores the irrelevant ones, which leads to more accurate texture restoration.
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  • 文章类型: Journal Article
    野生荒漠草原的特点是栖息地多样,植物分布不均,植物类之间的相似性,和植物阴影的存在。然而,现有的检测荒漠草原植物物种的模型精度低,需要大量的参数,并招致高昂的计算成本,使它们不适合在这些环境中的工厂识别场景中部署。为了应对这些挑战,本文提出了一种轻量级、快速的植物物种检测系统,称为YOLOv8s-KDT,为复杂的沙漠草原环境量身定制。首先,该模型引入了一种动态卷积KernelWarehouse方法,以降低卷积内核的维数并增加其数量,从而在参数效率和表示能力之间实现更好的平衡。其次,该模型将三元组注意力纳入其特征提取网络,有效地捕捉信道与空间位置的关系,增强模型的特征提取能力。最后,动态探测头的引入解决了与目标探测头和注意力不均匀有关的问题,从而改进目标检测头的表示,同时降低计算成本。实验结果表明,升级后的YOLOv8s-KDT模型能够快速有效地识别荒漠草地植物。与原始模型相比,FLOP下降50.8%,精度提高了4.5%,mAP增加了5.6%。目前,将YOLOv8s-KDT模型部署在宁夏荒漠草原移动植物识别APP和定点生态信息观测平台中。它有助于调查整个宁夏地区的荒漠草原植被分布以及长期观察和跟踪特定地区的植物生态信息,比如大水坑,黄集田,和宁夏的红寺步。
    Wild desert grasslands are characterized by diverse habitats, uneven plant distribution, similarities among plant class, and the presence of plant shadows. However, the existing models for detecting plant species in desert grasslands exhibit low precision, require a large number of parameters, and incur high computational cost, rendering them unsuitable for deployment in plant recognition scenarios within these environments. To address these challenges, this paper proposes a lightweight and fast plant species detection system, termed YOLOv8s-KDT, tailored for complex desert grassland environments. Firstly, the model introduces a dynamic convolutional KernelWarehouse method to reduce the dimensionality of convolutional kernels and increase their number, thus achieving a better balance between parameter efficiency and representation ability. Secondly, the model incorporates triplet attention into its feature extraction network, effectively capturing the relationship between channel and spatial position and enhancing the model\'s feature extraction capabilities. Finally, the introduction of a dynamic detection head tackles the issue related to target detection head and attention non-uniformity, thus improving the representation of the target detection head while reducing computational cost. The experimental results demonstrate that the upgraded YOLOv8s-KDT model can rapidly and effectively identify desert grassland plants. Compared to the original model, FLOPs decreased by 50.8%, accuracy improved by 4.5%, and mAP increased by 5.6%. Currently, the YOLOv8s-KDT model is deployed in the mobile plant identification APP of Ningxia desert grassland and the fixed-point ecological information observation platform. It facilitates the investigation of desert grassland vegetation distribution across the entire Ningxia region as well as long-term observation and tracking of plant ecological information in specific areas, such as Dashuikeng, Huangji Field, and Hongsibu in Ningxia.
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  • 文章类型: Journal Article
    注意力通常被视为精神上的聚光灯,它可以像变焦镜头一样在特定的空间位置进行缩放,并具有中心环绕梯度。这里,我们展示了沿着视觉层次结构的信号传输中注意力聚光灯的神经特征。在视网膜V1和下游区域之间进行了fMRI背景连通性分析,以表征两种注意状态下区域间相互作用的空间分布。我们发现,与分散的注意力相比,焦点注意力增强了背景连通性强度的空间梯度。动态因果模型分析进一步揭示了注意力在V1和语外皮层之间的反馈和前馈连接中的作用。在引发强烈拥挤效应的背景下,注意力在背景连通性配置文件中的影响减弱。我们的发现揭示了通过调节人类视觉皮层早期阶段的反复处理来实现信息传输中与上下文相关的注意力优先顺序。
    Attention is often viewed as a mental spotlight, which can be scaled like a zoom lens at specific spatial locations and features a center-surround gradient. Here, we demonstrate a neural signature of attention spotlight in signal transmission along the visual hierarchy. fMRI background connectivity analysis was performed between retinotopic V1 and downstream areas to characterize the spatial distribution of inter-areal interaction under two attentional states. We found that, compared to diffused attention, focal attention sharpened the spatial gradient in the strength of the background connectivity. Dynamic causal modeling analysis further revealed the effect of attention in both the feedback and feedforward connectivity between V1 and extrastriate cortex. In a context which induced a strong effect of crowding, the effect of attention in the background connectivity profile diminished. Our findings reveal a context-dependent attention prioritization in information transmission via modulating the recurrent processing across the early stages in human visual cortex.
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  • 文章类型: Journal Article
    解决由于潜在的严重影响而导致的准确跌倒事件检测的关键需求,本文介绍了空间信道和池化增强YouOnlyLookOnce版本5小(SCPE-YOLOv5s)模型。跌倒事件由于其变化的尺度和微妙的姿势特征而对检测提出了挑战。为了解决这个问题,SCPE-YOLOv5将空间注意力引入了高效信道注意力(ECA)网络,这显著增强了模型从空间姿态分布中提取特征的能力。此外,该模型将平均池化层集成到空间金字塔池(SPP)网络中,以支持跌倒姿势的多尺度提取。同时,通过将ECA网络纳入SPP,该模型有效地结合了全局和局部特征,进一步增强了特征提取。本文在公共数据集上验证了SCPE-YOLOv5,证明它达到了88.29%的平均精度,表现优于你只看一次版本5小4.87%。此外,该模型实现每秒57.4帧。因此,SCPE-YOLOv5s为跌倒事件检测提供了一种新颖的解决方案。
    Addressing the critical need for accurate fall event detection due to their potentially severe impacts, this paper introduces the Spatial Channel and Pooling Enhanced You Only Look Once version 5 small (SCPE-YOLOv5s) model. Fall events pose a challenge for detection due to their varying scales and subtle pose features. To address this problem, SCPE-YOLOv5s introduces spatial attention to the Efficient Channel Attention (ECA) network, which significantly enhances the model\'s ability to extract features from spatial pose distribution. Moreover, the model integrates average pooling layers into the Spatial Pyramid Pooling (SPP) network to support the multi-scale extraction of fall poses. Meanwhile, by incorporating the ECA network into SPP, the model effectively combines global and local features to further enhance the feature extraction. This paper validates the SCPE-YOLOv5s on a public dataset, demonstrating that it achieves a mean Average Precision of 88.29 %, outperforming the You Only Look Once version 5 small by 4.87 %. Additionally, the model achieves 57.4 frames per second. Therefore, SCPE-YOLOv5s provides a novel solution for fall event detection.
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  • 文章类型: Journal Article
    当躺在MRI扫描仪中甚至没有任何运动时,MRI扫描仪的静态磁场诱导受试者前庭器官(MVS)的磁流体动力学刺激。因此,MVS不仅会引起水平前庭眼球震颤,还会引起空间注意力的水平偏向。在这项研究中,我们旨在确定3TMRI扫描仪中MVS引起的VOR和空间注意力偏差的时程,以及参与者离开扫描仪后各自的副作用.以前在健康志愿者中评估了视觉搜索任务中的眼球运动和明显的空间注意力,during,经过一小时的MVS。所有参与者都在扫描仪内展示了VOR,随着时间的推移而下降,但从未完全消失。重要的是,在空间关注和探索中也存在MVS引起的水平偏差,它在扫描仪中持续了整整一个小时。退出扫描仪后,我们观察到在VOR和空间注意力中表现出的相反方向的后效应,7分钟后统计学上不再检测到。MVS对空间注意力的持续影响对于fMRI研究的设计和解释以及消除空间忽视的治疗干预措施的发展具有重要意义。
    When lying inside a MRI scanner and even in the absence of any motion, the static magnetic field of MRI scanners induces a magneto-hydrodynamic stimulation of subjects\' vestibular organ (MVS). MVS thereby not only causes a horizontal vestibular nystagmus but also induces a horizontal bias in spatial attention. In this study, we aimed to determine the time course of MVS-induced biases in both VOR and spatial attention inside a 3 T MRI-scanner as well as their respective aftereffects after participants left the scanner. Eye movements and overt spatial attention in a visual search task were assessed in healthy volunteers before, during, and after a one-hour MVS period. All participants exhibited a VOR inside the scanner, which declined over time but never vanished completely. Importantly, there was also an MVS-induced horizontal bias in spatial attention and exploration, which persisted throughout the entire hour within the scanner. Upon exiting the scanner, we observed aftereffects in the opposite direction manifested in both the VOR and in spatial attention, which were statistically no longer detectable after 7 min. Sustained MVS effects on spatial attention have important implications for the design and interpretation of fMRI-studies and for the development of therapeutic interventions counteracting spatial neglect.
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  • 文章类型: Journal Article
    背景使用功能性电刺激(FES)的非自愿肢体激活可以改善单侧空间忽略。然而,FES对与空间注意力相关的大脑活动的影响尚不清楚。因此,在这项研究中,我们旨在研究FES对空间注意力的影响。方法学在这项介入研究中,要求13名健康的右撇子参与者在每组FES或假刺激之前和之后执行Posner任务6分钟,总共有两套。FES应用于左前臂伸肌,频率为25Hz,脉冲宽度为100μs,并调整强度以达到运动阈值。通电和暂停时间均设定为5秒。Posner任务用于测量出现在计算机屏幕上的目标的反应时间。大脑活动,用氧合血红蛋白值表示,根据国际10-20系统方法使用具有24个探针的近红外光谱法进行测量。结果在左半球,运动前和辅助运动区域的氧合血红蛋白值,初级体感皮层,FES后的体感关联面积明显高于假刺激后。在右半球,氧合血红蛋白值在运动前显著增加,小学,和辅助运动区;在上肢上回;以及FES后的体感关联区域。Posner任务中的反应时间在FES和假条件之间没有显着差异。结论集体,这些结果表明,上肢的FES可以激活视觉注意力网络的腹侧通路,并改善刺激驱动的注意力.刺激驱动的注意功能的激活可能有助于单侧空间忽视患者的症状改善。
    Background Involuntary limb activation using functional electrical stimulation (FES) can improve unilateral spatial neglect. However, the impact of FES on brain activity related to spatial attention remains unclear. Thus, in this study, we aimed to examine the effects of FES on spatial attention. Methodology In this interventional study, 13 healthy right-handed participants were asked to perform the Posner task for six minutes both before and after either FES or sham stimulation during each set, resulting in a total of two sets. FES was applied to the left forearm extensor muscles, with a frequency of 25 Hz, a pulse width of 100 μs, and the intensity adjusted to reach the motor threshold. Both the energization and pause times were set to five seconds. The Posner task was used to measure reaction time to a target appearing on a computer screen. Brain activity, indicated by oxygenated hemoglobin values, was measured using near-infrared spectroscopy with 24 probes according to the International 10-20 system method. Results In the left hemisphere, oxygenated hemoglobin values in the premotor and supplementary motor areas, primary somatosensory cortex, and somatosensory association areas were significantly higher after FES than after sham stimulation. In the right hemisphere, oxygenated hemoglobin values were significantly increased in the premotor, primary, and supplementary motor areas; in the supramarginal gyrus; and in the somatosensory association areas after FES. Reaction times in the Posner task did not differ significantly between the FES and sham conditions. Conclusions Collectively, these results suggest that FES of the upper limbs can activate the ventral pathway of the visual attention network and improve stimulus-driven attention. Activation of stimulus-driven attentional function could potentially contribute to symptom improvement in patients with unilateral spatial neglect.
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