In this work, we develop convolutional neural generative coding (Conv-NGC), a generalization of predictive coding to the case of convolution/deconvolution-based computation. Specifically, we concretely implement a flexible neurobiologically-motivated algorithm that progressively refines latent state feature maps in order to dynamically form a more accurate internal representation/reconstruction model of natural images. The performance of the resulting sensory processing system is evaluated on complex datasets such as Color-MNIST, CIFAR-10, and Street House View Numbers (SVHN). We study the effectiveness of our brain-inspired model on the tasks of reconstruction and image denoising and find that it is competitive with convolutional auto-encoding systems trained by backpropagation of errors and outperforms them with respect to out-of-distribution reconstruction (including the full 90k CINIC-10 test set).
翻译:在这项工作中,我们开发了进化神经基因编码(Conv-NGC),这是对进化/进化计算情况的预测编码的概括化。具体地说,我们具体地实施了灵活的神经生物动力算法,逐步完善潜伏状态地貌图,以便动态地形成更准确的自然图像内部代表/重建模型。由此产生的感官处理系统的性能在诸如Color-MNIST、CIFAR-10和Street House View numbers(SVHN)等复杂数据集上进行了评估。我们研究了我们大脑启发型模型在重建和图像破除任务方面的有效性,发现它与通过错误反演进式自动编码系统具有竞争力,在分配外的重建(包括全部90kCINIC-10测试)方面超越了这些系统。