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一种受生物启发的视觉神经模型,用于在图形-背景和噪声干扰中针对可变对比度稳健且稳定地检测平移物体的运动方向。

A Bio-Inspired Visual Neural Model for Robustly and Steadily Detecting Motion Directions of Translating Objects Against Variable Contrast in the Figure-Ground and Noise Interference.

作者信息

Zhang Sheng, Li Ke, Luo Zhonghua, Xu Mengxi, Zheng Shengnan

机构信息

College of Information Science and Engineering, Hohai University, Nanjing 211100, China.

School of Mechanical and Electrical Engineering, Nanchang Institute of Technology, Nanchang 330044, China.

出版信息

Biomimetics (Basel). 2025 Jan 14;10(1):51. doi: 10.3390/biomimetics10010051.

Abstract

(1) Background: At present, the bio-inspired visual neural models have made significant achievements in detecting the motion direction of the translating object. Variable contrast in the figure-ground and environmental noise interference, however, have a strong influence on the existing model. The responses of the lobula plate tangential cell (LPTC) neurons of Drosophila are robust and stable in the face of variable contrast in the figure-ground and environmental noise interference, which provides an excellent paradigm for addressing these challenges. (2) Methods: To resolve these challenges, we propose a bio-inspired visual neural model, which consists of four stages. Firstly, the photoreceptors (R1-R6) are utilized to perceive the change in luminance. Secondly, the change in luminance is divided into parallel ON and OFF pathways based on the lamina monopolar cell (LMC), and the spatial denoising and the spatio-temporal lateral inhibition (LI) mechanisms can suppress environmental noise and improve motion boundaries, respectively. Thirdly, the non-linear instantaneous feedback mechanism in divisive contrast normalization is adopted to reduce local contrast sensitivity; further, the parallel ON and OFF contrast pathways are activated. Finally, the parallel motion and contrast pathways converge on the LPTC in the lobula complex. (3) Results: By comparing numerous experimental simulations with state-of-the-art (SotA) bio-inspired models, we can draw four conclusions. Firstly, the effectiveness of the contrast neural computation and the spatial denoising mechanism is verified by the ablation study. Secondly, this model can robustly detect the motion direction of the translating object against variable contrast in the figure-ground and environmental noise interference. Specifically, the average detection success rate of the proposed bio-inspired model under the pure and real-world complex noise datasets was increased by 5.38% and 5.30%. Thirdly, this model can effectively reduce the fluctuation in this model response against variable contrast in the figure-ground and environmental noise interference, which shows the stability of this model; specifically, the average inter-quartile range of the coefficient of variation in the proposed bio-inspired model under the pure and real-world complex noise datasets was reduced by 38.77% and 47.84%, respectively. The average decline ratio of the sum of the coefficient of variation in the proposed bio-inspired model under the pure and real-world complex noise datasets was 57.03% and 67.47%, respectively. Finally, the robustness and stability of this model are further verified by comparing other early visual pre-processing mechanisms and engineering denoising methods. (4) Conclusions: This model can robustly and steadily detect the motion direction of the translating object under variable contrast in the figure-ground and environmental noise interference.

摘要

(1) 背景:目前,受生物启发的视觉神经模型在检测平移物体的运动方向方面取得了显著成就。然而,图底之间的对比度变化和环境噪声干扰对现有模型有很大影响。果蝇的小叶板切向细胞(LPTC)神经元在面对图底之间的对比度变化和环境噪声干扰时,其反应稳健且稳定,这为应对这些挑战提供了一个出色的范例。(2) 方法:为了解决这些挑战,我们提出了一种受生物启发的视觉神经模型,该模型由四个阶段组成。首先,利用光感受器(R1 - R6)感知亮度变化。其次,基于薄板单极细胞(LMC)将亮度变化分为平行的开通道和关通道,空间去噪和时空侧向抑制(LI)机制可分别抑制环境噪声并改善运动边界。第三,采用除法对比度归一化中的非线性瞬时反馈机制来降低局部对比度敏感性;此外,激活平行的开通道和关通道对比度通路。最后,平行的运动和对比度通路在小叶复合体中的LPTC处汇聚。(3) 结果:通过将大量实验模拟与最先进的(SotA)受生物启发的模型进行比较,我们可以得出四个结论。首先,通过消融研究验证了对比度神经计算和空间去噪机制的有效性。其次,该模型能够在图底之间的对比度变化和环境噪声干扰下稳健地检测平移物体的运动方向。具体而言,所提出的受生物启发的模型在纯噪声数据集和真实世界复杂噪声数据集下的平均检测成功率分别提高了5.38%和5.30%。第三,该模型能够有效降低在图底之间的对比度变化和环境噪声干扰下其响应的波动,这表明了该模型的稳定性;具体而言,所提出的受生物启发的模型在纯噪声数据集和真实世界复杂噪声数据集下的变异系数的平均四分位间距分别降低了百分之38.77和47.84。所提出的受生物启发的模型在纯噪声数据集和真实世界复杂噪声数据集下变异系数总和的平均下降率分别为57.03%和67.47%。最后,通过比较其他早期视觉预处理机制和工程去噪方法,进一步验证了该模型的稳健性和稳定性。(4) 结论:该模型能够在图底之间的对比度变化和环境噪声干扰下稳健且稳定地检测平移物体的运动方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/451a/11761596/6ab6bd0f93bf/biomimetics-10-00051-g001.jpg

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