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      "text": "Private: By working with and augmenting consumer photos and videos, the model is exposed to sensitive or personally identifiable information. Transparent and explainable: When consumers input an image of themselves or their surroundings, they need to understand how that media is used. Fair and impartial: If the training set is unbalanced and therefore biased, renderings for virtual try-ons may be more accurate or realistic for one demographic group over another.",
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