Layton Oliver W, Steinmetz Scott T
Department of Computer Science, Colby College, Waterville, ME, United States.
Center for Computing Research, Sandia National Labs, Albuquerque, NM, United States.
Front Neurosci. 2024 Sep 2;18:1441285. doi: 10.3389/fnins.2024.1441285. eCollection 2024.
Accuracy-optimized convolutional neural networks (CNNs) have emerged as highly effective models at predicting neural responses in brain areas along the primate ventral stream, but it is largely unknown whether they effectively model neurons in the complementary primate dorsal stream. We explored how well CNNs model the optic flow tuning properties of neurons in dorsal area MSTd and we compared our results with the Non-Negative Matrix Factorization (NNMF) model, which successfully models many tuning properties of MSTd neurons. To better understand the role of computational properties in the NNMF model that give rise to optic flow tuning that resembles that of MSTd neurons, we created additional CNN model variants that implement key NNMF constraints - non-negative weights and sparse coding of optic flow. While the CNNs and NNMF models both accurately estimate the observer's self-motion from purely translational or rotational optic flow, NNMF and the CNNs with nonnegative weights yield substantially less accurate estimates than the other CNNs when tested on more complex optic flow that combines observer translation and rotation. Despite its poor accuracy, NNMF gives rise to tuning properties that align more closely with those observed in primate MSTd than any of the accuracy-optimized CNNs. This work offers a step toward a deeper understanding of the computational properties and constraints that describe the optic flow tuning of primate area MSTd.
精度优化的卷积神经网络(CNN)已成为预测灵长类动物腹侧视觉通路中脑区神经反应的高效模型,但它们是否能有效地模拟灵长类动物互补的背侧视觉通路中的神经元,目前仍不清楚。我们探究了CNN对背侧MSTd区神经元的光流调谐特性的模拟效果,并将我们的结果与非负矩阵分解(NNMF)模型进行了比较,该模型成功地模拟了MSTd神经元的许多调谐特性。为了更好地理解NNMF模型中产生类似于MSTd神经元光流调谐的计算特性的作用,我们创建了额外的CNN模型变体,这些变体实现了NNMF的关键约束——非负权重和光流的稀疏编码。虽然CNN和NNMF模型都能从纯平移或旋转光流中准确估计观察者的自身运动,但在结合观察者平移和旋转的更复杂光流上进行测试时,NNMF和具有非负权重的CNN的估计精度明显低于其他CNN。尽管NNMF的精度较差,但它产生的调谐特性比任何精度优化的CNN更接近在灵长类MSTd中观察到的特性。这项工作朝着更深入理解描述灵长类动物MSTd区光流调谐的计算特性和约束迈出了一步。