Abstract

Differently exposed low dynamic range (LDR) images are often captured sequentially using a smart phone or a digital camera with movements. Optical flow thus plays an important role in ghost removal for high dynamic range (HDR) imaging. The optical flow estimation is based on the theory of photometric consistency, which assumes that the corresponding pixels between two images have the same intensity. However, the assumption is no longer valid for the differently exposed LDR images since a pixel’s intensity changes significantly inter images. To address the problem, an unsupervised optical flow estimation framework, is presented in this study. Intensity mapping functions (IMFs) are first adopted to alleviate the intensity changes between the LDR images. Then a novel IMF-based unsupervised learning objective is proposed to circumvent the need for ground truth optical flows when training the deep network. Experimental results and ablation studies on publicly available datasets show that our framework outperforms the state-of-the-art unsupervised optical flow methods, demonstrating the effectiveness of the IMF and the learning objective. Our code is available at https://github.com/liuziyang123/LDRFlow.

Full Text
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