FLIP

Author:

Andersson Pontus1,Nilsson Jim1,Akenine-Möller Tomas1,Oskarsson Magnus2,Åström Kalle2,Fairchild Mark D.3

Affiliation:

1. NVIDIA

2. Centre for Mathematical Sciences, Lund University

3. Munsell Color Science Laboratory, Rochester Institute of Technology

Abstract

Image quality measures are becoming increasingly important in the field of computer graphics. For example, there is currently a major focus on generating photorealistic images in real time by combining path tracing with denoising, for which such quality assessment is integral. We present FLIP, which is a difference evaluator with a particular focus on the differences between rendered images and corresponding ground truths. Our algorithm produces a map that approximates the difference perceived by humans when alternating between two images. FLIP is a combination of modified existing building blocks, and the net result is surprisingly powerful. We have compared our work against a wide range of existing image difference algorithms and we have visually inspected over a thousand image pairs that were either retrieved from image databases or generated in-house. We also present results of a user study which indicate that our method performs substantially better, on average, than the other algorithms. To facilitate the use of FLIP, we provide source code in C++, MATLAB, NumPy/SciPy, and PyTorch.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications

Reference36 articles.

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4. New measurements reveal weaknesses of image quality metrics in evaluating graphics artifacts

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