Food Contour Matting Dataset
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Project Overview:
Objective
We’re proud to unveil our latest project: an extensive Food Contour Matting Dataset. This dataset marks a milestone in our ongoing commitment to provide diverse, high-quality datasets for machine learning models, including images, videos, texts, and more. Specifically, it is designed to revolutionize AI-driven culinary platforms, enhance food photography editing, and streamline diet tracking applications.
Scope
Collect images of a variety of food items from different cuisines. Include both dishes and single items. Each image should come with an alpha matte that highlights the exact shape of the food.
Sources
- Collaborations with professional food photographers to access their portfolios.
- Agreements with restaurants and food delivery platforms for showcasing their menu items.
- User-submitted images from culinary enthusiasts and home chefs.
- Controlled photography sessions capturing a wide variety of foods.
Data Collection Metrics
- Total Images Collected: 120,000
- Images Annotated: 100,000
- Breakdown: Main Courses (40,000), Desserts (20,000), Snacks (15,000), Beverages (10,000), Additional Varieties (35,000)
Annotation Process
Stages
- Image Pre-processing: First, we standardized resolutions and corrected lighting variations to ensure consistency. This step was essential for maintaining uniformity across all images.
- Contour Matting: Next, our annotators spent, on average, 30 minutes per image. They focused on the complex details of food contours, which required significant precision and effort.
- Validation: Finally, to ensure accuracy, our team rigorously compared the mattes with the original images. This thorough validation process was crucial for guaranteeing precision.
Annotation Metrics
- Total Created Mattes: 100,000
- Average Matting Time per Image: 30 minutes (Given the complexity of food contours)
Quality Assurance
Stages
Automated Comparison: Leverage current matting algorithms to compare their results with manual mattes, identifying potential deviations. Furthermore, this process helps ensure accuracy and consistency.
Peer Review Workflow: Each matte undergoes a secondary review by another expert to correct any overlooked mistakes. Moreover, this additional check enhances the overall quality of the mattes.
Inter-annotator Agreement: In cases where images have unclear contours, multiple annotators assess them to reach a consensus on the matte. Consequently, this approach reduces ambiguity and improves reliability.
QA Metrics
- Algorithm Cross-referenced Mattes: 60,000
- Peer-reviewed Mattes: 30,000
- Adjusted Mattes after Review: 2,000
Conclusion
The Food Contour Matting Dataset is an essential tool for innovators in the culinary and photography fields. By providing detailed mattes of various food items, this dataset helps in creating advanced image editing tools. Additionally, it supports diet tracking applications and enhances visual presentations on culinary platforms.
Quality Data Creation
Guaranteed TAT
ISO 9001:2015, ISO/IEC 27001:2013 Certified
HIPAA Compliance
GDPR Compliance
Compliance and Security
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