...
首页> 外文期刊>Journal of vision >Optimal edge filters explain human blur detection
【24h】

Optimal edge filters explain human blur detection

机译:最佳边缘过滤器可说明人为模糊检测

获取原文

摘要

Abstract Abstract: Abstract?? Edges are important visual features, providing many cues to the three-dimensional structure of the world. One of these cues is edge blur. Sharp edges tend to be caused by object boundaries, while blurred edges indicate shadows, surface curvature, or defocus due to relative depth. Edge blur also drives accommodation and may be implicated in the correct development of the eye's optical power. Here we use classification image techniques to reveal the mechanisms underlying blur detection in human vision. Observers were shown a sharp and a blurred edge in white noise and had to identify the blurred edge. The resultant smoothed classification image derived from these experiments was similar to a derivative of a Gaussian filter. We also fitted a number of edge detection models (MIRAGE, N1, and N3+) and the ideal observer to observer responses, but none performed as well as the classification image. However, observer responses were well fitted by a recently developed optimal edge detector model, coupled with a Bayesian prior on the expected blurs in the stimulus. This model outperformed the classification image when performance was measured by the Akaike Information Criterion. This result strongly suggests that humans use optimal edge detection filters to detect edges and encode their blur.
机译:摘要摘要:摘要?边缘是重要的视觉特征,可为世界的三维结构提供许多线索。这些提示之一是边缘模糊。锐利的边缘往往是由对象边界引起的,而模糊的边缘则表示由于相对深度而产生的阴影,表面曲率或散焦。边缘模糊还会驱动调节,并且可能与眼睛的光功率的正确发育有关。在这里,我们使用分类图像技术来揭示人类视觉中模糊检测的潜在机制。观察者看到的是白噪声中的锋利边缘和模糊边缘,必须识别模糊边缘。从这些实验得到的平滑分类图像类似于高斯滤波器的导数。我们还拟合了许多边缘检测模型(MIRAGE,N1和N3 +)和理想的观察者对观察者响应的方法,但没有一个执行得比分类图像更好。然而,观察者的反应已被最近开发的最佳边缘检测器模型很好地拟合,再加上贝叶斯先验模型对刺激的预期模糊。当通过赤池信息准则测量性能时,该模型的性能优于分类图像。这一结果强烈表明,人类使用最佳的边缘检测滤镜来检测边缘并对其模糊进行编码。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号