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    Data from: CURE-OR: Challenging Unreal and Real Environments for Object...

    • data.niaid.nih.gov
    • opendatalab.com
    • +1more
    Updated Jun 28, 2020
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    Jinsol Lee (2020). CURE-OR: Challenging Unreal and Real Environments for Object Recognition [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_3888508
    Explore at:
    Dataset updated
    Jun 28, 2020
    Dataset provided by
    Ghassan AlRegib
    Jinsol Lee
    Dogancan Temel
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    As one of the research directions at OLIVES Lab @ Georgia Tech, we focus on the robustness of data-driven algorithms under diverse challenging conditions where trained models can possibly be depolyed. To achieve this goal, we introduced a large-sacle (1.M images) object recognition dataset (CURE-OR) which is among the most comprehensive datasets with controlled synthetic challenging conditions. In CURE-OR dataset, there are 1,000,000 images of 100 objects with varying size, color, and texture, captured with multiple devices in different setups. The majority of images in the dataset were acquired with smartphones and tested with off-the-shelf applications to benchmark the recognition performance of devices and applications that are used in our daily lives. Please refer to our GitHub page for code, papers, and more information. Some data specifications are provided below:

    Image Name Format :

    "backgroundID_deviceID_objectOrientationID_objectID_challengeType_challengeLevel.jpg"

    Background ID:

    1: White 2: Texture 1 - living room 3: Texture 2 - kitchen 4: 3D 1 - living room 5: 3D 2 – office

    Object Orientation ID:

    1: Front (0 º) 2: Left side (90 º) 3: Back (180 º) 4: Right side (270 º) 5: Top

    Object ID:

    1-100

    Challenge Type:

    No challenge 02: Resize 03: Underexposure 04: Overexposure 05: Gaussian blur 06: Contrast 07: Dirty lens 1 08: Dirty lens 2 09: Salt & pepper noise 10: Grayscale 11: Grayscale resize 12: Grayscale underexposure 13: Grayscale overexposure 14: Grayscale gaussian blur 15: Grayscale contrast 16: Grayscale dirty lens 1 17: Grayscale dirty lens 2 18: Grayscale salt & pepper noise

    Challenge Level:

    A number between [0, 5], where 0 indicates no challenge, 1 the least severe and 5 the most severe challenge. Challenge type 1 (no challenge) and 10 (grayscale) has a level of 0 only. Challenge types 2 (resize) and 11 (grayscale resize) has 4 levels (1 through 4). All other challenges have levels 1 to 5.

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Share
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TwitterTwitter
Email
Click to copy link
Link copied
Close
Cite
Jinsol Lee (2020). CURE-OR: Challenging Unreal and Real Environments for Object Recognition [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_3888508

Data from: CURE-OR: Challenging Unreal and Real Environments for Object Recognition

Related Article
Explore at:
Dataset updated
Jun 28, 2020
Dataset provided by
Ghassan AlRegib
Jinsol Lee
Dogancan Temel
License

Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically

Description

As one of the research directions at OLIVES Lab @ Georgia Tech, we focus on the robustness of data-driven algorithms under diverse challenging conditions where trained models can possibly be depolyed. To achieve this goal, we introduced a large-sacle (1.M images) object recognition dataset (CURE-OR) which is among the most comprehensive datasets with controlled synthetic challenging conditions. In CURE-OR dataset, there are 1,000,000 images of 100 objects with varying size, color, and texture, captured with multiple devices in different setups. The majority of images in the dataset were acquired with smartphones and tested with off-the-shelf applications to benchmark the recognition performance of devices and applications that are used in our daily lives. Please refer to our GitHub page for code, papers, and more information. Some data specifications are provided below:

Image Name Format :

"backgroundID_deviceID_objectOrientationID_objectID_challengeType_challengeLevel.jpg"

Background ID:

1: White 2: Texture 1 - living room 3: Texture 2 - kitchen 4: 3D 1 - living room 5: 3D 2 – office

Object Orientation ID:

1: Front (0 º) 2: Left side (90 º) 3: Back (180 º) 4: Right side (270 º) 5: Top

Object ID:

1-100

Challenge Type:

No challenge 02: Resize 03: Underexposure 04: Overexposure 05: Gaussian blur 06: Contrast 07: Dirty lens 1 08: Dirty lens 2 09: Salt & pepper noise 10: Grayscale 11: Grayscale resize 12: Grayscale underexposure 13: Grayscale overexposure 14: Grayscale gaussian blur 15: Grayscale contrast 16: Grayscale dirty lens 1 17: Grayscale dirty lens 2 18: Grayscale salt & pepper noise

Challenge Level:

A number between [0, 5], where 0 indicates no challenge, 1 the least severe and 5 the most severe challenge. Challenge type 1 (no challenge) and 10 (grayscale) has a level of 0 only. Challenge types 2 (resize) and 11 (grayscale resize) has 4 levels (1 through 4). All other challenges have levels 1 to 5.

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