| Literature DB >> 33967570 |
Khalid Omer1, Luca Caucci2, Meredith Kupinski1.
Abstract
The performance of a convolutional neural network (CNN) on an image texture detection task as a function of linear image processing and the number of training images is investigated. Performance is quantified by the area under (AUC) the receiver operating characteristic (ROC) curve. The Ideal Observer (IO) maximizes AUC but depends on high-dimensional image likelihoods. In many cases, the CNN performance can approximate the IO performance. This work demonstrates counterexamples where a full-rank linear transform degrades the CNN performance below the IO in the limit of large quantities of training data and network layers. A subsequent linear transform changes the images' correlation structure, improves the AUC, and again demonstrates the CNN dependence on linear processing. Compression strictly decreases or maintains the IO detection performance while compression can increase the CNN performance especially for small quantities of training data. Results indicate an optimal compression ratio for the CNN based on task difficulty, compression method, and number of training images.Entities:
Year: 2020 PMID: 33967570 PMCID: PMC8101292 DOI: 10.2352/j.imagingsci.technol.2020.64.6.060408
Source DB: PubMed Journal: J Imaging Sci Technol ISSN: 1062-3701 Impact factor: 0.400