“…In addition, to eliminate the randomness, we randomly (repeatable) split the dataset into the train set and test set for 8 times and the average accuracy is recorded. We compare the CS-SPCA approach with several popular visual classification approaches such as SVM [40], SRC [41], CRC [42], SLRC [43], NRC [44], LC-KSVD [2], CSDL-SRC [6], LEDL [3], and LC-PDL [45]. In our experiments, all the comparison methods are completed under the same experimental conditions, and all the methods are implemented by ourselves and adjusted to the optimal results.…”