首页> 外文会议>Conference on neural and stochastic methods in image and signal processing >Unsupervised learning of contextual constraints in neural networks for simultaneous visual processing of multiple objects
【24h】

Unsupervised learning of contextual constraints in neural networks for simultaneous visual processing of multiple objects

机译:无监督神经网络中的语境限制学习,用于多个对象的同时视觉处理

获取原文

摘要

A simple self-organizing neural network model, called an EXIN network, that learns to process sensory information in a context-sensitive manner, is described. EXIN networks develop efficient representation structures for higher-level visual tasks such as segmentation, grouping, transparency, depth perception, and size perception. Exposure to a perceptual environment during a developmental period serves to configure the network to perform appropriate organization of sensory data. A new anti-Hebbian inhibitory learning rule permits superposition of multiple simultaneous neural activations (multiple winners), while maintaining contextual consistency constraints, instead of forcing winner-take-all pattern classifications. The activations can represent multiple patterns simultaneously and can represent uncertainty. The network performs parallel parsing, credit attribution, and simultaneous constraint satisfaction. EXIN networks can learn to represent multiple oriented edges even where they intersect and can learn to represent multiple transparently overlaid surfaces defined by stereo or motion cues. In the case of stereo transparency, the inhibitory learning implements both a uniqueness constraint and permits coactivation of cells representing multiple disparities at the same image location. Thus two or more disparities can be active simultaneously without interference. This behavior is analogous to that of Prazdny's stereo vision algorithm, with the bonus that each binocular point is assigned a unique disparity. In a large implementation, such a NN would also be able to represent effectively the disparities of a cloud of points at random depths, like human observers, and unlike Prazdny's method.
机译:描述了一种简单的自组织神经网络模型,称为EXIN网络,其学习以上下文敏感方式处理感觉信息。 EXIN网络为更高级别的视觉任务开发高效的表示结构,例如分段,分组,透明度,深度感知和尺寸感知。在发育期间接触感知环境,用于配置网络以执行适当的感官数据组织。一个新的反休息抑制学习规则允许叠加多个同时神经激活(多个获奖者),同时保持上下文一致性约束,而不是强制获胜者所有模式分类。激活可以同时表示多个模式,并且可以代表不确定性。该网络执行并行解析,信用署和同时约束满足。 EXIN网络可以了解,即使在它们交叉来表示多个导向边缘和可以学习代表多个通过立体声或运动提示透明覆盖表面限定。在立体声透明度的情况下,抑制学习实现唯一限制约束,并且允许在相同图像位置处表示多个差异的小区的共同。因此,两个或更多个差距可以同时在不干扰的情况下激活。这种行为类似于Prazdny的立体声视觉算法的行为,奖金是每个双目点被分配一个独特的差异。在大的实施方案中,这种NN也能够有效地表示随机深度,如人类观察者,与Prazdny的方法不同。

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