Li Bin, Todo Yuki, Tang Zheng
Division of Electrical Engineering and Computer Science, Kanazawa University, Kanazawa 9201192, Japan.
Faculty of Electrical, Information and Communication Engineering, Kanazawa University, Kanazawa 9201192, Japan.
Brain Sci. 2022 Apr 1;12(4):470. doi: 10.3390/brainsci12040470.
The Hubel-Wiesel (HW) model is a classical neurobiological model for explaining the orientation selectivity of cortical cells. However, the HW model still has not been fully proved physiologically, and there are few concise but efficient systems to quantify and simulate the HW model and can be used for object orientation detection applications. To realize a straightforward and efficient quantitive method and validate the HW model's reasonability and practicality, we use McCulloch-Pitts (MP) neuron model to simulate simple cells and complex cells and implement an artificial visual system (AVS) for two-dimensional object orientation detection. First, we realize four types of simple cells that are only responsible for detecting a specific orientation angle locally. Complex cells are realized with the sum function. Every local orientation information of an object is collected by simple cells and subsequently converged to the corresponding same type complex cells for computing global activation degree. Finally, the global orientation is obtained according to the activation degree of each type of complex cell. Based on this scheme, an AVS for global orientation detection is constructed. We conducted computer simulations to prove the feasibility and effectiveness of our scheme and the AVS. Computer simulations show that the mechanism-based AVS can make accurate orientation discrimination and shows striking biological similarities with the natural visual system, which indirectly proves the rationality of the Hubel-Wiesel model. Furthermore, compared with traditional CNN, we find that our AVS beats CNN on orientation detection tasks in identification accuracy, noise resistance, computation and learning cost, hardware implementation, and reasonability.
休伯尔 - 威塞尔(HW)模型是用于解释皮层细胞方向选择性的经典神经生物学模型。然而,HW模型在生理学上仍未得到充分验证,并且很少有简洁而高效的系统来量化和模拟HW模型,可用于目标方向检测应用。为了实现一种直接且高效的定量方法,并验证HW模型的合理性和实用性,我们使用麦卡洛克 - 皮茨(MP)神经元模型来模拟简单细胞和复杂细胞,并实现了一个用于二维目标方向检测的人工视觉系统(AVS)。首先,我们实现了四种仅负责局部检测特定方向角的简单细胞。复杂细胞通过求和函数实现。物体的每个局部方向信息由简单细胞收集,随后汇聚到相应的同类型复杂细胞以计算全局激活度。最后,根据每种类型复杂细胞的激活度获得全局方向。基于此方案,构建了一个用于全局方向检测的AVS。我们进行了计算机模拟,以证明我们方案和AVS的可行性和有效性。计算机模拟表明,基于该机制的AVS能够进行准确的方向辨别,并且与自然视觉系统具有显著的生物学相似性,这间接证明了休伯尔-威塞尔模型的合理性。此外,与传统的卷积神经网络(CNN)相比,我们发现我们的AVS在方向检测任务的识别准确率、抗噪声能力、计算和学习成本、硬件实现以及合理性方面优于CNN。