heterogeneous convolutional neural networks (CNNs). The reliability and complementation
of heterogeneous CNNs are investigated in our method. Each CNN recognizes a proportion
of input samples with high-confidence, and feeds the rejected samples into the next CNN.
The samples rejected by the last CNN are recognized by a voting committee of all CNNs.
Experiments on MNIST dataset show that our method achieves an error rate 0.23% using …