Kermani Kolankeh Arash, Teichmann Michael, Hamker Fred H
Department of Computer Science, Chemnitz University of Technology Chemnitz, Germany.
Front Comput Neurosci. 2015 Mar 25;9:35. doi: 10.3389/fncom.2015.00035. eCollection 2015.
A substantial number of works have aimed at modeling the receptive field properties of the primary visual cortex (V1). Their evaluation criterion is usually the similarity of the model response properties to the recorded responses from biological organisms. However, as several algorithms were able to demonstrate some degree of similarity to biological data based on the existing criteria, we focus on the robustness against loss of information in the form of occlusions as an additional constraint for better understanding the algorithmic level of early vision in the brain. We try to investigate the influence of competition mechanisms on the robustness. Therefore, we compared four methods employing different competition mechanisms, namely, independent component analysis, non-negative matrix factorization with sparseness constraint, predictive coding/biased competition, and a Hebbian neural network with lateral inhibitory connections. Each of those methods is known to be capable of developing receptive fields comparable to those of V1 simple-cells. Since measuring the robustness of methods having simple-cell like receptive fields against occlusion is difficult, we measure the robustness using the classification accuracy on the MNIST hand written digit dataset. For this we trained all methods on the training set of the MNIST hand written digits dataset and tested them on a MNIST test set with different levels of occlusions. We observe that methods which employ competitive mechanisms have higher robustness against loss of information. Also the kind of the competition mechanisms plays an important role in robustness. Global feedback inhibition as employed in predictive coding/biased competition has an advantage compared to local lateral inhibition learned by an anti-Hebb rule.
大量的研究致力于对初级视觉皮层(V1)的感受野特性进行建模。它们的评估标准通常是模型响应特性与生物有机体记录响应的相似性。然而,由于基于现有标准,有几种算法能够展示出与生物数据的某种程度的相似性,我们将注意力集中在针对遮挡形式的信息丢失的鲁棒性上,将其作为更好理解大脑早期视觉算法层面的一个额外约束。我们试图研究竞争机制对鲁棒性的影响。因此,我们比较了采用不同竞争机制的四种方法,即独立成分分析、具有稀疏约束的非负矩阵分解、预测编码/偏向竞争以及具有侧向抑制连接的赫布神经网络。已知这些方法中的每一种都能够发展出与V1简单细胞相当的感受野。由于测量具有类似简单细胞感受野的方法对遮挡的鲁棒性很困难,我们使用MNIST手写数字数据集上的分类准确率来衡量鲁棒性。为此,我们在MNIST手写数字数据集的训练集上训练所有方法,并在具有不同遮挡水平的MNIST测试集上对它们进行测试。我们观察到,采用竞争机制的方法对信息丢失具有更高的鲁棒性。而且竞争机制的类型在鲁棒性方面也起着重要作用。与通过反赫布规则学习的局部侧向抑制相比,预测编码/偏向竞争中采用的全局反馈抑制具有优势。