Wu Nathan, Zhou Baohua, Agrochao Margarida, Clark Damon A
Yale College, New Haven, CT 06511.
Department of Molecular Cellular and Developmental Biology, Yale University, New Haven, CT 06511.
Proc Natl Acad Sci U S A. 2025 Mar 11;122(10):e2410768122. doi: 10.1073/pnas.2410768122. Epub 2025 Mar 6.
Our intuition suggests that when a movie is played in reverse, our perception of motion at each location in the reversed movie will be perfectly inverted compared to the original. This intuition is also reflected in classical theoretical and practical models of motion estimation, in which velocity flow fields invert when inputs are reversed in time. However, here we report that this symmetry of motion perception upon time reversal is broken in real visual systems. We designed a set of visual stimuli to investigate time reversal symmetry breaking in the fruit fly 's well-studied optomotor rotation behavior. We identified a suite of stimuli with a wide variety of properties that can uncover broken time reversal symmetry in fly behavioral responses. We then trained neural network models to predict the velocity of scenes with both natural and artificial contrast distributions. Training with naturalistic contrast distributions yielded models that broke time reversal symmetry, even when the training data themselves were time reversal symmetric. We show analytically and numerically that the breaking of time reversal symmetry in the model responses can arise from contrast asymmetry in the training data, but can also arise from other features of the contrast distribution. Furthermore, shallower neural network models can exhibit stronger symmetry breaking than deeper ones, suggesting that less flexible neural networks may be more prone to time reversal symmetry breaking. Overall, these results reveal a surprising feature of biological motion detectors and suggest that it could arise from constrained optimization in natural environments.
我们的直觉表明,当一部电影倒放时,与原始电影相比,我们对倒放电影中每个位置的运动感知将完全反转。这种直觉也反映在经典的运动估计理论和实践模型中,在这些模型中,当输入在时间上反转时,速度流场也会反转。然而,我们在此报告,在实际视觉系统中,这种时间反转时运动感知的对称性被打破了。我们设计了一组视觉刺激来研究果蝇经过充分研究的视动旋转行为中的时间反转对称性破缺。我们识别出了一系列具有各种特性的刺激,这些刺激能够揭示果蝇行为反应中被打破的时间反转对称性。然后,我们训练神经网络模型来预测具有自然和人工对比度分布的场景的速度。使用自然主义对比度分布进行训练产生了打破时间反转对称性的模型,即使训练数据本身是时间反转对称的。我们通过分析和数值模拟表明,模型响应中时间反转对称性的打破可能源于训练数据中的对比度不对称,但也可能源于对比度分布的其他特征。此外,较浅的神经网络模型可能比较深的模型表现出更强的对称性破缺,这表明灵活性较低的神经网络可能更容易出现时间反转对称性破缺。总体而言,这些结果揭示了生物运动探测器的一个惊人特征,并表明它可能源于自然环境中的约束优化。