CVJul 3, 2023

UW-ProCCaps: UnderWater Progressive Colourisation with Capsules

arXiv:2307.01091v22 citationsh-index: 26
Originality Incremental advance
AI Analysis

This addresses the need for more efficient image collection in marine studies by enabling longer data collection phases with less storage, though it is an incremental improvement in underwater image processing.

The paper tackles the problem of reducing memory space for underwater image storage by reconstructing colors from the luminescence channel, saving 2/3 of storage space, and demonstrates that their solution outperforms state-of-the-art methods on benchmark datasets.

Underwater images are fundamental for studying and understanding the status of marine life. We focus on reducing the memory space required for image storage while the memory space consumption in the collecting phase limits the time lasting of this phase leading to the need for more image collection campaigns. We present a novel machine-learning model that reconstructs the colours of underwater images from their luminescence channel, thus saving 2/3 of the available storage space. Our model specialises in underwater colour reconstruction and consists of an encoder-decoder architecture. The encoder is composed of a convolutional encoder and a parallel specialised classifier trained with webly-supervised data. The encoder and the decoder use layers of capsules to capture the features of the entities in the image. The colour reconstruction process recalls the progressive and the generative adversarial training procedures. The progressive training gives the ground for a generative adversarial routine focused on the refining of colours giving the image bright and saturated colours which bring the image back to life. We validate the model both qualitatively and quantitatively on four benchmark datasets. This is the first attempt at colour reconstruction in greyscale underwater images. Extensive results on four benchmark datasets demonstrate that our solution outperforms state-of-the-art (SOTA) solutions. We also demonstrate that the generated colourisation enhances the quality of images compared to enhancement models at the SOTA.

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