2021
DOI: 10.3390/s21154966
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A Deep Dive of Autoencoder Models on Low-Contrast Aquatic Images

Abstract: Public aquariums and similar institutions often use video as a method to monitor the behavior, health, and status of aquatic organisms in their environments. These video footages take up a sizeable amount of space and require the use of autoencoders to reduce their file size for efficient storage. The autoencoder neural network is an emerging technique which uses the extracted latent space from an input source to reduce the image size for storage, and then reconstructs the source within an acceptable loss rang… Show more

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