Single-person Portrait Matting Dataset
Home » Case Study » Single-person Portrait Matting Dataset
Project Overview:
Objective
To compile a specialized dataset for single-person portrait matting, which supports advancements in digital photography, image editing software, augmented reality, and more, we need to address several key issues.
Scope
This collection showcases single-person portraits in a variety of settings, moods, and lighting conditions. Additionally, the detailed annotations help to clearly distinguish the subject from the background, allowing for accurate image matting.
Sources
- Studio portraits with diverse backgrounds and lighting setups.
- Outdoor shots across different times of day and locations.
- Indoor shots in homes, offices, and other settings.
- Varied expressions, poses, and outfits.
- Images with different hair types, accessories, and props.
Data Collection Metrics
- Total Data Points: 300,000 images
- Studio Portraits: 120,000
- Outdoor Shots: 100,000
- Indoor Casual Settings: 80,000
Annotation Process
Stages
- Raw Data Cleaning: First, remove any images that are blurry, have significant obstructions, or are redundant. This ensures that the dataset remains high-quality and useful.
- Foreground-Background Segmentation: Next, annotate to clearly distinguish the single person from the surrounding background. This step is crucial for accurate segmentation.
- Hair & Fine Details Matting: Then, pay special attention to hair and other intricate details. These areas usually pose challenges in matting, so careful work here is essential.
Annotation Metrics
- Total Foreground-Background Segmentations: 300,000
- Hair & Fine Detail Annotations: 300,000
- Annotations Reviewed: 60,000 (20% of total annotations for quality assurance)
Quality Assurance
Stages
Expert Review: Specialists in digital photography and image processing have carefully analyzed a selection of the dataset. Additionally, they provided detailed feedback on the quality and accuracy of the images.
Automated Consistency Checks: Advanced tools have detected possible inconsistencies or gaps in annotations. Therefore, steps will be taken to address these issues to ensure the dataset’s reliability.
Inter-annotator Agreement: By having multiple annotators review overlapping image sets, standardization was ensured. Moreover, this collaborative approach has significantly improved the consistency of the annotations.
QA Metrics
- Annotations Reviewed by Experts: 60,000 (20% of total annotations)
- Inconsistencies Identified and Rectified: 12,000 (4% of total annotations)
Conclusion
The Single-person Portrait Matting Dataset is a valuable resource for applications that aim to separate subjects from their backgrounds in portrait images. By focusing on the details of the human figure, especially fine elements like hair, this dataset can significantly improve portrait photography and image editing tasks. As a result, it has the potential to bring about notable advancements in these fields.
Quality Data Creation
Guaranteed TAT
ISO 9001:2015, ISO/IEC 27001:2013 Certified
HIPAA Compliance
GDPR Compliance
Compliance and Security
Let's Discuss your Data collection Requirement With Us
To get a detailed estimation of requirements please reach us.