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    Home » Merging AI and underwater photography to reveal hidden ocean worlds | MIT News
    Artificial Intelligence

    Merging AI and underwater photography to reveal hidden ocean worlds | MIT News

    ProfitlyAIBy ProfitlyAIJune 25, 2025No Comments7 Mins Read
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    Within the Northeastern United States, the Gulf of Maine represents one of the vital biologically numerous marine ecosystems on the planet — house to whales, sharks, jellyfish, herring, plankton, and tons of of different species. However whilst this ecosystem helps wealthy biodiversity, it’s present process speedy environmental change. The Gulf of Maine is warming sooner than 99 % of the world’s oceans, with penalties which might be nonetheless unfolding.

    A brand new analysis initiative creating at MIT Sea Grant, known as LOBSTgER — brief for Studying Oceanic Bioecological Programs By Generative Representations — brings collectively synthetic intelligence and underwater pictures to doc the ocean life left weak to those modifications and share them with the general public in new visible methods. Co-led by underwater photographer and visiting artist at MIT Sea Grant Keith Ellenbogen and MIT mechanical engineering PhD pupil Andreas Mentzelopoulos, the undertaking explores how generative AI can increase scientific storytelling by constructing on field-based photographic information.

    Simply because the Nineteenth-century digital camera remodeled our means to doc and reveal the pure world — capturing life with unprecedented element and bringing distant or hidden environments into view — generative AI marks a brand new frontier in visible storytelling. Like early pictures, AI opens a artistic and conceptual house, difficult how we outline authenticity and the way we talk scientific and inventive views. 

    Within the LOBSTgER undertaking, generative fashions are educated completely on a curated library of Ellenbogen’s unique underwater images — every picture crafted with inventive intent, technical precision, correct species identification, and clear geographic context. By constructing a high-quality dataset grounded in real-world observations, the undertaking ensures that the ensuing imagery maintains each visible integrity and ecological relevance. As well as, LOBSTgER’s fashions are constructed utilizing customized code developed by Mentzelopoulos to guard the method and outputs from any potential biases from exterior information or fashions. LOBSTgER’s generative AI builds upon actual pictures, increasing the researchers’ visible vocabulary to deepen the general public’s connection to the pure world.

    This ocean sunfish (Mola mola) picture was generated by LOBSTgER’s unconditional fashions.

    AI-generated picture: Keith Ellenbogen, Andreas Mentzelopoulos, and LOBSTgER.

    At its coronary heart, LOBSTgER operates on the intersection of artwork, science, and expertise. The undertaking attracts from the visible language of pictures, the observational rigor of marine science, and the computational energy of generative AI. By uniting these disciplines, the workforce is just not solely creating new methods to visualise ocean life — they’re additionally reimagining how environmental tales may be advised. This integrative method makes LOBSTgER each a analysis software and a artistic experiment — one which displays MIT’s long-standing custom of interdisciplinary innovation.

    Underwater pictures in New England’s coastal waters is notoriously troublesome. Restricted visibility, swirling sediment, bubbles, and the unpredictable motion of marine life all pose fixed challenges. For the previous a number of years, Ellenbogen has navigated these challenges and is constructing a complete report of the area’s biodiversity via the undertaking, House to Sea: Visualizing New England’s Ocean Wilderness. This huge dataset of underwater photographs gives the muse for coaching LOBSTgER’s generative AI fashions. The photographs span numerous angles, lighting circumstances, and animal behaviors, leading to a visible archive that’s each artistically putting and biologically correct.

    Picture synthesis by way of reverse diffusion: This brief video exhibits the de-noising trajectory from Gaussian latent noise to photorealistic output utilizing LOBSTgER’s unconditional fashions. Iterative de-noising requires 1,000 ahead passes via the educated neural community.

    Video: Keith Ellenbogen and Andreas Mentzelopoulos / MIT Sea Grant

    LOBSTgER’s customized diffusion fashions are educated to copy not solely the biodiversity Ellenbogen paperwork, but additionally the inventive type he makes use of to seize it. By studying from 1000’s of actual underwater photographs, the fashions internalize fine-grained particulars similar to pure lighting gradients, species-specific coloration, and even the atmospheric texture created by suspended particles and refracted daylight. The result’s imagery that not solely seems visually correct, but additionally feels immersive and shifting.

    The fashions can each generate new, artificial, however scientifically correct photographs unconditionally (i.e., requiring no person enter/steerage), and improve actual images conditionally (i.e., image-to-image era). By integrating AI into the photographic workflow, Ellenbogen will be capable of use these instruments to get well element in turbid water, alter lighting to emphasise key topics, and even simulate scenes that will be practically unattainable to seize within the subject. The workforce additionally believes this method might profit different underwater photographers and picture editors going through comparable challenges. This hybrid technique is designed to speed up the curation course of and allow storytellers to assemble a extra full and coherent visible narrative of life beneath the floor.

    Side-by-side images of an American lobster on the sea floor underneath seaweed. One has been enhanced by AI and is far more vibrant.

    Left: Enhanced picture of an American lobster utilizing LOBSTgER’s image-to-image fashions. Proper: Authentic picture.

    Left: AI genertated picture by Keith Ellenbogen, Andreas Mentzelopoulos, and LOBSTgER. Proper: Keith Ellenbogen

    In a single key sequence, Ellenbogen captured high-resolution photographs of lion’s mane jellyfish, blue sharks, American lobsters, and ocean sunfish (Mola mola) whereas free diving in coastal waters. “Getting a high-quality dataset is just not straightforward,” Ellenbogen says. “It requires a number of dives, missed alternatives, and unpredictable circumstances. However these challenges are a part of what makes underwater documentation each troublesome and rewarding.”

    Mentzelopoulos has developed unique code to coach a household of latent diffusion fashions for LOBSTgER grounded on Ellenbogen’s photographs. Creating such fashions requires a excessive degree of technical experience, and coaching fashions from scratch is a posh course of demanding tons of of hours of computation and meticulous hyperparameter tuning.

    The undertaking displays a parallel course of: subject documentation via pictures and mannequin improvement via iterative coaching. Ellenbogen works within the subject, capturing uncommon and fleeting encounters with marine animals; Mentzelopoulos works within the lab, translating these moments into machine-learning contexts that may prolong and reinterpret the visible language of the ocean.

    “The purpose isn’t to interchange pictures,” Mentzelopoulos says. “It’s to construct on and complement it — making the invisible seen, and serving to folks see environmental complexity in a means that resonates each emotionally and intellectually. Our fashions goal to seize not simply organic realism, however the emotional cost that may drive real-world engagement and motion.”

    LOBSTgER factors to a hybrid future that merges direct remark with technological interpretation. The workforce’s long-term purpose is to develop a complete mannequin that may visualize a variety of species discovered within the Gulf of Maine and, finally, apply comparable strategies to marine ecosystems around the globe.

    The researchers counsel that pictures and generative AI kind a continuum, quite than a battle. Pictures captures what’s — the feel, gentle, and animal habits throughout precise encounters — whereas AI extends that imaginative and prescient past what’s seen, towards what may very well be understood, inferred, or imagined primarily based on scientific information and inventive imaginative and prescient. Collectively, they provide a robust framework for speaking science via image-making.

    In a area the place ecosystems are altering quickly, the act of visualizing turns into extra than simply documentation. It turns into a software for consciousness, engagement, and, in the end, conservation. LOBSTgER remains to be in its infancy, and the workforce seems ahead to sharing extra discoveries, photographs, and insights because the undertaking evolves.

    Reply from the lead picture: The left picture was generated utilizing utilizing LOBSTgER’s unconditional fashions and the suitable picture is actual.

    For extra info, contact Keith Ellenbogen and Andreas Mentzelopoulos.



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