Neuroscience Center, University of North Carolina, Chapel Hill, North Carolina, 27599, USA.
Department of Pharmacology, University of North Carolina, Chapel Hill, North Carolina, 27599, USA.
Sci Rep. 2018 Jan 22;8(1):1379. doi: 10.1038/s41598-017-19108-w.
Mice use vision to navigate and avoid predators in natural environments. However, their visual systems are compact compared to other mammals, and it is unclear how well mice can discriminate ethologically relevant scenes. Here, we examined natural scene discrimination in mice using an automated touch-screen system. We estimated the discrimination difficulty using the computational metric structural similarity (SSIM), and constructed psychometric curves. However, the performance of each mouse was better predicted by the mean performance of other mice than SSIM. This high inter-mouse agreement indicates that mice use common and robust strategies to discriminate natural scenes. We tested several other image metrics to find an alternative to SSIM for predicting discrimination performance. We found that a simple, primary visual cortex (V1)-inspired model predicted mouse performance with fidelity approaching the inter-mouse agreement. The model involved convolving the images with Gabor filters, and its performance varied with the orientation of the Gabor filter. This orientation dependence was driven by the stimuli, rather than an innate biological feature. Together, these results indicate that mice are adept at discriminating natural scenes, and their performance is well predicted by simple models of V1 processing.
老鼠在自然环境中利用视觉来导航和躲避捕食者。然而,与其他哺乳动物相比,它们的视觉系统较为紧凑,目前尚不清楚老鼠对与行为相关的场景能有多好的辨别能力。在这里,我们使用自动化触摸屏系统来研究老鼠对自然场景的辨别能力。我们使用计算度量结构相似性(SSIM)来估计辨别难度,并构建心理物理曲线。然而,与 SSIM 相比,其他老鼠的平均表现更能预测每只老鼠的表现。这种高鼠标间的一致性表明,老鼠使用共同且强大的策略来辨别自然场景。我们测试了几种其他图像度量标准,以找到替代 SSIM 来预测辨别性能的方法。我们发现,一个简单的、受初级视皮层(V1)启发的模型可以以接近鼠标间一致性的保真度来预测老鼠的表现。该模型涉及用 Gabor 滤波器卷积图像,其性能随 Gabor 滤波器的方向而变化。这种方向依赖性是由刺激驱动的,而不是内在的生物特征。总之,这些结果表明老鼠善于辨别自然场景,并且它们的表现可以很好地用简单的 V1 处理模型来预测。