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@@ -23,12 +23,13 @@ Integrating 3D mannequin images into training scenarios boosts the effectiveness
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  ## Dataset Description:
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- Scope: Features over 100 mannequins from retail environments.
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- Diversity: Includes female, male, and children mannequins, some sporting natural hair.
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- Image Capture: Utilizes both selfie and frontal camera perspectives.
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- Variations: Encompasses accessories such as glasses, sunglasses, scarves, and hats.
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- Lighting Conditions: Offers a range of lighting scenarios for well-rounded algorithm training.
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- Full version of dataset is availible for commercial usage - leave a request on our website Axonlabs to purchase the dataset 💰
 
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  Best Used For Anti-Spoofing Training: The dataset’s 3D characteristics elevate the training efficiency of anti-spoofing algorithms, ensuring a more robust learning experience for detection models.
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  Keywords: 3D Mannequin Face Dataset, Liveness Detection Models, Anti-Spoofing, Comprehensive Dataset, Realistic Features, Detection of Genuine Faces, Sophisticated Spoofing Scenarios, Diverse Lighting, Retail Mannequins, Variability in Facial Accessories, Frontal Camera Usage, Enhanced Anti-Spoofing Algorithms, Security in Biometric Systems, Comprehensive Exposure, Facial Recognition Training, Mannequin-Based Anti-Spoofing, 3D Mask Simulation.
 
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  ## Dataset Description:
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+ - Scope: Features over 100 mannequins from retail environments.
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+ - Diversity: Includes female, male, and children mannequins, some sporting natural hair.
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+ - Image Capture: Utilizes both selfie and frontal camera perspectives.
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+ - Variations: Encompasses accessories such as glasses, sunglasses, scarves, and hats.
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+ - Lighting Conditions: Offers a range of lighting scenarios for well-rounded algorithm training.
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  Best Used For Anti-Spoofing Training: The dataset’s 3D characteristics elevate the training efficiency of anti-spoofing algorithms, ensuring a more robust learning experience for detection models.
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  Keywords: 3D Mannequin Face Dataset, Liveness Detection Models, Anti-Spoofing, Comprehensive Dataset, Realistic Features, Detection of Genuine Faces, Sophisticated Spoofing Scenarios, Diverse Lighting, Retail Mannequins, Variability in Facial Accessories, Frontal Camera Usage, Enhanced Anti-Spoofing Algorithms, Security in Biometric Systems, Comprehensive Exposure, Facial Recognition Training, Mannequin-Based Anti-Spoofing, 3D Mask Simulation.