Presentation + Paper
14 May 2019 Characterization of CNN classifier performance with respect to variation in optical contrast, using synthetic electro-optical data
Christopher Menart, Colin Leong, Olga Mendoza-Schrock, Edmund Zelnio
Author Affiliations +
Abstract
Deep neural networks demonstrate high performance at classifying high-dimensional signals, but often fail to generalize to data that is different from the data they were trained on. In this paper, we investigate the resilience of convolutional neural networks (CNNs) to unforeseen operating conditions. Specifically, we empirically evaluate the ability of CNN models to generalize across changes in image contrast. Multiple models are trained on electro- optical (EO) or near-infrared (IR) data, and are evaluated in environments with degraded contrast compared to training. Experiments are replicated across varying architectures, including state-of-the-art classification models such as Resnet-152, and across both synthetic and measured datasets. In comparison to models trained and evaluated on identically-distributed data, these models can generalize well when contrast invariance is built up through data augmentation. Future work will investigate CNN ability to generalize to other changes in operating conditions.
Conference Presentation
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Christopher Menart, Colin Leong, Olga Mendoza-Schrock, and Edmund Zelnio "Characterization of CNN classifier performance with respect to variation in optical contrast, using synthetic electro-optical data", Proc. SPIE 10988, Automatic Target Recognition XXIX, 109880N (14 May 2019); https://doi.org/10.1117/12.2519494
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Data modeling

RGB color model

Environmental sensing

Electro optical modeling

Electro optics

Image enhancement

Sensors

Back to Top