소비자Synthetic data

Metal Container Industrial Waste Images Dataset

During synthetic data generation, duplication may occur due to the close resemblance to the original dataset, a common issue in such processes. To minimize this, consider generating more data than initially required.

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  • Labeling type: Metal Container
  • Data Format: Image

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About Dataset

1) Data Introduction

• This dataset provides images and information on industrial waste, especially Metal Containers.

2) Data Utilization

(1) Metal Container Data has characteristics that: • The dataset contains images of various types of metal containers, making it useful for identifying and analyzing the characteristics of each container. • Provides information to understand the various types, uses, and characteristics of metal containers. (2) Metal Container Data can be used to: • Recycling and waste management: Developing systems to sort and manage metal containers for recycling purposes is useful for increasing waste management efficiency. • Logistics and Inventory Management: Helps create a system for tracking and managing metal container inventory in warehouses and logistics chains. • Durability and material analysis: Analyzes the durability and material of metal containers to help with quality control and material selection. •Develop recognition and classification models: AI models can be trained to recognize and classify different types of metal containers. For example, in an industrial application, when a user scans a container, the model can identify the type and purpose of that container.

Meta Data

DomainConsumerZoodata formatsImage
Zoodata volume1000 itemsRegistration date2024.08.01
Zoodata typeSynthetic dataExistence of labelingExist
Labeling typeMetal ContainerLabeling formatsjson

Good

Performance 1
85

Outstanding

Performance 2
100

Data Samples 4

Data sample
Data sample
Data sample

Utility

Downstream Classification (▲)KID (▼)One Class Classification (▼)
Total000
SuitabilityOKOKOK

The higher the value, the better (▲)

Model Performance

Downstream classification accuracy is an indicator used to evaluate the usefulness of synthetic data. It measures whether synthetic data performs similarly to real data. The method involves training the same model separately on real data and synthetic data, and then comparing the accuracies of the two models. Interpretation: A high accuracy rate means that the model trained on synthetic data performs similarly to the one trained on real data, indicating that the synthetic data is of high quality and well represents the real data.

The closer to zero or the lower the value, the better (▼)

Quality

KID (Kernel Inception Distance) is a metric used to evaluate the similarity between generated images and real images. It compares the differences between the two sample distributions using Kernel Mean Embedding, without assuming a normal distribution. Interpretation: A lower KID score suggests that generated images are more similar to real images, with a score close to 0 being ideal. Specifically, a score below 0.01 indicates very high similarity.


Privacy

LPIPS (▲)SSIM (▼)
Total00
SuitabilityOKOK

The higher the value, the better (▲)

Perceptual Similarity

Learned Perceptual Image Patch Similarity (LPIPS) is a metric used to measure the visual similarity between two images by utilizing neural networks to extract key features and calculate the distance between them. High LPIPS value: Indicates high similarity between images, raising the risk of information leakage. Low LPIPS value: Suggests that synthetic images are perceptually different from real images, indicating a lower risk of sensitive information leakage.

The closer to zero or the lower the value, the better (▼)

Structural Similarity

The Structural Similarity Index Measure (SSIM) is a metric used to assess the similarity between two images. It is primarily used to compare the quality of a restored or compressed image with the original image. SSIM measures visual similarity by considering brightness, contrast, and structure. High SSIM value (0.9 or above): Indicates that the synthetic image is very similar to the real image, which may increase the risk of information leakage.
Low SSIM value (0.6 or below): Indicates low similarity and reduced risk of leakage.

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