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Synthesizing Images of Marine Plastic Using Deep Convolutional Generative Adversarial Networksby@gautamtata
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Synthesizing Images of Marine Plastic Using Deep Convolutional Generative Adversarial Networks

by Aquanaut.ai4mNovember 19th, 2021
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This is theoretical and we are working on publishing our paper. We will be applying the DCGAN architecture on the DeepTrash dataset. This is a collection of plastic images in the epipelagic layer and abyssopelagic layer of the ocean curated for marine plastic detection using computer vision. The DCGAN is a direct extension of the GAN architecture mentioned above except it uses Deep Convolutional Layers in the discriminator and generator respectively. It was first described by Radford et. al in the paper Unsupervised Representation Learning With Deep Convolutionsal Generative Adversarial Networks.

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Solving the Oceans Most Complex Problems by Making Fish Farming Smart.

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Solving the Oceans Most Complex Problems by Making Fish Farming Smart.

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