目录
1. PETA Dataset
2. RAP Dataset
3. PA-100K Dataset
4. WIDER Attribute Dataset
5. Database of Human Attributes (HAT)
6. Market-1501_Attribute
7. DukeMTMC-Attribute
8. Clothing Attributes Dataset
9. Parse27k Dataset
10. RAP 2.0 Dataset
11. CRP Dataset
12. APis dataset
13. Berkeley-Attributes of People dataset
14. Deepfashion dataset
15. Video-Based PAR dataset
1. PETA Dataset
链接: http://mmlab.ie.cuhk.edu.hk/projects/PETA.html
PETA Dataset由多个数据集组合而成,共有65个attribute,其中,包括61个 Binary Attribute,4个 Multi-class attributes。
2. RAP Dataset
3. PA-100K Dataset
链接: https://drive.google.com/drive/folders/0B5_Ra3JsEOyOUlhKM0VPZ1ZWR2M
4. WIDER Attribute Dataset
链接: http://mmlab.ie.cuhk.edu.hk/projects/WIDERAttribute.html
WIDER Attribute is a large-scale human attribute dataset. It contains 13789 images belonging to 30 scene categories, and 57524 human bounding boxes each annotated with 14 binary attributes.
The Binary Attributes are as follows :
Male, Long Hair, Sunglasses, Hat, Tshirt, longSleeve, Formal, Shorts, Jeans, Long Pants, Skirt, Face Mask, Logo, Plaid or Stripe.
5. Database of Human Attributes (HAT)
链接: https://jurie.users.greyc.fr/datasets/hat.html
train set size: , test set size: , evaluation set size:
| attribute | label |
|---|---|
| female | +1 : attribute present, -1 : attribute absent, 0 : attribute not visible or ambiguous |
| frontalpose | DITTO |
| profilepose | DITTO |
| turnedback | DITTO |
| upperbody | DITTO |
| standing | DITTO |
| runwalk | DITTO |
| crouching | DITTO |
| sitting | DITTO |
| armsbent | DITTO |
| elderly | DITTO |
| middleaged | DITTO |
| young | DITTO |
| teen | DITTO |
| kid | DITTO |
| baby | DITTO |
| tanktop | DITTO |
| tshirt | DITTO |
| mensuit | DITTO |
| longskirt | DITTO |
| shortskirt | DITTO |
| smallshorts | DITTO |
| lowcuttop | DITTO |
| swimsuit | DITTO |
| weddingdress | DITTO |
| bermudashorts | DITTO |
6. Market-1501_Attribute
链接: https://github.com/vana77/Market-1501_Attribute
train set size: , test set size: , evaluation set size:
| attribute | representation in file | label |
|---|---|---|
| gender | gender | 1 : male, 2 : female |
| hair length | hair | 1 : short hair, 2 : long hair |
| sleeve length | up | 1 : long sleeve, 2 : short sleeve |
| length of lower-body clothing | down | 1 : long lower body clothing, 2 : short |
| type of lower-body clothing | clothes | 1 : dress, 2 : pants |
| wearing hat | hat | 1 : no, 2 : yes |
| carrying backpack | backpack | 1 : no, 2 : yes |
| carrying bag | bag | 1 : no, 2 : yes |
| carrying handbag | handbag | 1 : no, 2 : yes |
| age | age | 1 : young, 2 : teenager, 3 : adult, 4 : old |
| 8 color of upper-body clothing | upblack, upwhite, upred, uppurple, upyellow, upgray, upblue, upgreen | 1 : no, 2 : yes |
| 9 color of lower-body clothing | downblack, downwhite, downpink, downpurple, downyellow, downgray, downblue, downgreen,downbrown | 1 : no, 2 : yes |
Smaple:
7. DukeMTMC-Attribute
链接: https://github.com/vana77/DukeMTMC-attribute
train set size: , test set size: , evaluation set size:
| attribute | representation in file | label |
|---|---|---|
| gender | gender | 1 : male, 2 : female |
| length of upper-body clothing | top | 1 : short upper body clothing, 2 : long |
| wearing boots | boots | 1 : no, 2 : yes |
| wearing hat | hat | 1 : no, 2 : yes |
| carrying backpack | backpack | 1 : no, 2 : yes |
| carrying bag | bag | 1 : no, 2 : yes |
| carrying handbag | handbag | 1 : no, 2 : yes |
| color of shoes | shoes | 1 : dark, 2 : light |
| 8 color of upper-body clothing | upblack, upwhite, upred, uppurple, upgray, upblue, upgreen, upbrown | 1 : no, 2 : yes |
| 7 color of lower-body clothing | downblack, downwhite, downred, downgray, downblue, downgreen, downbrown | 1 : no, 2 : yes |
Smaple:
8. Clothing Attributes Dataset
链接: https://purl.stanford.edu/tb980qz1002
The dataset contains 1856 images, with 26 ground truth clothing attributes collected using Amazon Mechanical Turk. All labels are arranged in the order from image 1 to 1856. Some label entries are ‘NaN’, meaning the 6 human workers cannot reach an agreement on this clothing attribute.
Details of the clothing attributes labels are shown below:
| attribute | label |
|---|---|
| Necktie | 1 : No necktie, 2 : Has necktie |
| Collar | 1 : No collar, 2 : Has collar |
| Gender | 1 : Male, 2. Female |
| Placket | 1 : No placket, 2 : Has placket |
| Skin exposure | 1 : Low exposure, 2 : High exposure |
| Wear scarf | 1 : No scarf, 2 : Has scarf |
| Solid pattern | 1 : No, 2 : Yes |
| Floral pattern | 1 : No, 2 : Yes |
| Spotted pattern | 1 : No, 2 : Yes |
| Graphics pattern | 1 : No, 2 : Yes |
| Plaid pattern | 1 : No, 2 : Yes |
| Striped pattern | 1 : No, 2 : Yes |
| Red color | 1 : No, 2 : Yes |
| Yellow color | 1 : No, 2 : Yes |
| Green color | 1 : No, 2 : Yes |
| Cyan color | 1 : No, 2 : Yes |
| Blue color | 1 : No, 2 : Yes |
| Purple color | 1 : No, 2 : Yes |
| Brown color | 1 : No, 2 : Yes |
| White color | 1 : No, 2 : Yes |
| Gray color | 1 : No, 2 : Yes |
| Black color | 1 : No, 2 : Yes |
| Many (>2) colors | 1 : No, 2 : Yes |
| Sleeve length | 1 : No sleeves, 2 : Short sleeves, 3 : Long sleeves |
| Neckline | 1 : V-shape, 2 : Round, 3 : Other shapes |
| Category | 1 : Shirt, 2 : Sweater, 3 : T-shirt, 4 : Outerwear, 5 : Suit, 6 : Tank Top, 7 : Dress |
9. Parse27k Dataset
链接: https://www.vision.rwth-aachen.de/page/parse27k
The attributes are all defined based on some binary or multinomial proposition. The annotated attributes include two orientation labels with 4 and 8 discretizations, and several binary attributes with an additional N/A state:
- N/A or ? - the observer cannot decide
- yes - the proposition holds
- no - the proposition does not hold
The examples are all annotated with the following attributes:
- Gender (male, female, ?)
- Posture (standing, walking, (sitting), ?)
- Orientation (4 discretizations + ?)
- Orientation8 (8 discretizations + ?)
- Bag on Left Shoulder (yes, no, ?)
- Bag on Right Shoulder (yes, no, ?)
- Bag in Left Hand (yes, no, ?)
- Bag in Right Hand (yes, no, ?)
- Backpack (yes, no, ?)
- isPushing (yes, no, ?) – child-strollers, etc.
10. RAP 2.0 Dataset
链接: https://drive.google.com/file/d/1hoPIB5NJKf3YGMvLFZnIYG5JDcZTxHph/view
11. CRP Dataset
链接: http://www.vision.caltech.edu/~dhall/projects/CRP/
12. APis dataset
链接: http://www.cbsr.ia.ac.cn/english/APiS-1.0-Database.html
13. Berkeley-Attributes of People dataset
链接: https://www2.eecs.berkeley.edu/Research/Projects/CS/vision/shape/poselets/
train set size: , test set size:
| attribute | label |
|---|---|
| is_male | 1 : attribute present, -1 : attribute not absent, 0 : attribute unspecified. |
| has_long_hair | DITTO |
| has_glasses | DITTO |
| has_hat | DITTO |
| has_t-shirt | DITTO |
| has_long_sleeves | DITTO |
| has_shorts | DITTO |
| has_jeans | DITTO |
| has_long_pants | DITTO |
14. Deepfashion dataset
链接: http://mmlab.ie.cuhk.edu.hk/projects/DeepFashion.html
-
Category and Attribute Prediction Benchmark
num of images: 289222, num of attributes:1000, num of attribute type: 50
Note:- In attribute type, “1” represents texture-related attributes, “2” represents fabric-related attributes, “3” represents shape-related attributes, “4” represents part-related attributes, “5” represents style-related attributes.
- In category type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes.
- For the clothing categories, “Cape”, “Nightdress”, “Shirtdress” and “Sundress” have been merged into “Dress”.
- In clothes type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes. Upper-body clothes possess six fahsion landmarks, lower-body clothes possess four fashion landmarks, full-body clothes possess eight fashion landmarks.
- In variation type, “1” represents normal pose, “2” represents medium pose, “3” represents large pose, “4” represents medium zoom-in, “5” represents large zoom-in.
- In landmark visibility state, “0” represents visible, “1” represents invisible/occluded, “2” represents truncated/cut-off.
- For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left hem”, “right hem”]; For lower-body clothes, landmark annotations are listed in the order of [“left waistline”, “right waistline”, “left hem”, “right hem”]; For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left waistline”, “right waistline”, “left hem”, “right hem”].
-
In-shop Clothes Retrieval Benchmark
num of images: 52712, num of items: 7982, num of attributes:463
Note:- In clothes type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes. Upper-body clothes possess six fahsion landmarks, lower-body clothes possess four fashion landmarks, full-body clothes possess eight fashion landmarks.
- In attribute labels, “1” represents positive while “-1” represents negative, “0” represents unknown.In attribute labels, “1” represents positive while “-1” represents negative, “0” represents unknown.
- In landmark visibility state, “0” represents visible, “1” represents invisible/occluded, “2” represents truncated/cut-off.
- For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left hem”, “right hem”]; For lower-body clothes, landmark annotations are listed in the order of [“left waistline”, “right waistline”, “left hem”, “right hem”]; For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left waistline”, “right waistline”, “left hem”, “right hem”].
- In clothes type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes. Upper-body clothes possess six fahsion landmarks, lower-body clothes possess four fashion landmarks, full-body clothes possess eight fashion landmarks.
- In variation type, “1” represents normal pose, “2” represents medium pose, “3” represents large pose, “4” represents medium zoom-in, “5” represents large zoom-in.
-
Consumer-to-shop Clothes Retrieval Benchmark
num of images: 239557, num of items: 33881, num of attributes:303, num of attribute type: 18
Note:- In attribute labels, “1” represents positive while “-1” represents negative, “0” represents unknown.
- In clothes type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes.
- In source type, “1” represents shop image, “2” represents consumer image.
- In variation type, “1” represents normal pose, “2” represents medium pose, “3” represents large pose, “4” represents medium zoom-in, “5” represents large zoom-in.
- In landmark visibility state, “0” represents visible, “1” represents invisible/occluded, “2” represents truncated/cut-off.
- For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left hem”, “right hem”]; For lower-body clothes, landmark annotations are listed in the order of [“left waistline”, “right waistline”, “left hem”, “right hem”]; For upper-body clothes, landmark annotations are listed in the order of [“left collar”, “right collar”, “left sleeve”, “right sleeve”, “left waistline”, “right waistline”, “left hem”, “right hem”].
-
Fashion Landmark Detection Benchmark
num of images: 123016, num of items: 33881, num of attributes:303, num of attribute type: 18
Note:- In clothes type, “1” represents upper-body clothes, “2” represents lower-body clothes, “3” represents full-body clothes;
- In variation type, “1” represents normal pose, “2” represents medium pose, “3” represents large pose, “4” represents medium zoom-in, “5” represents large zoom-in;
- In landmark visibility state, “0” represents visible, “1” represents invisible.
-
Fashion Synthesis Benchmark
num of images: 78979, num of items: 33881, num of attributes:303, num of attribute type: 18
15. Video-Based PAR dataset
链接: https://github.com/yuange250/MARS-Attribute
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