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Annotations for ConfLab A Rich Multimodal Multisensor Dataset of Free-Standing Social Interactions In-the-Wild

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DataCite Commons2022-10-13 更新2024-07-03 收录
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This file contains the annotations for the ConfLab dataset, including actions (speaking status), pose, and F-formations. ------------------ <strong>./actions/speaking_status:</strong> ./processed: the processed speaking status files, aggregated into a single data frame per segment. Skipped rows in the raw data (see https://josedvq.github.io/covfee/docs/output for details) have been imputed using the code at: https://github.com/TUDelft-SPC-Lab/conflab/tree/master/preprocessing/speaking_status The processed annotations consist of: ./speaking: The first row contains person IDs matching the sensor IDs, The rest of the row contains binary speaking status annotations at 60fps for the corresponding 2 min video segment (7200 frames). ./confidence: Same as above. These annotations reflect the continuous-valued rating of confidence of the annotators in their speaking annotation. To load these files with pandas: pd.read_csv(p, index_col=False) <br> ./raw.zip: the raw outputs from speaking status annotation for each of the eight annotated 2-min video segments. These were were output by the covfee annotation tool (https://github.com/josedvq/covfee) Annotations were done at 60 fps. -------------------- <strong>./pose:</strong> ./coco: the processed pose files in coco JSON format, aggregated into a single data frame per video segment. These files have been generated from the raw files using the code at: https://github.com/TUDelft-SPC-Lab/conflab-keypoints To load in Python: f = json.load(open('/path/to/cam2_vid3_seg1_coco.json')) The skeleton structure (limbs) is contained within each file in: f['categories'][0]['skeleton'] and keypoint names at: f['categories'][0]['keypoints'] ./raw.zip: the raw outputs from continuous pose annotation. These were were output by the covfee annotation tool (https://github.com/josedvq/covfee) Annotations were done at 60 fps. --------------------- <strong>./f_formations:</strong> seg 2: 14:00 onwards, for videos of the form x2xxx.MP4 in /video/raw/ for the relevant cameras (2,4,6,8,10). seg 3: for videos of the form x3xxx.MP4 in /video/raw/ for the relevant cameras (2,4,6,8,10). Note that camera 10 doesn't include meaningful subject information/body parts that are not already covered in camera 8. First column: time stamp Second column: "()" delineates groups, "&lt;&gt;" delineates subjects, cam X indicates the best camera view for which a particular group exists. <br> phone.csv: time stamp (pertaining to seg3), corresponding group, ID of person using the phone
提供机构:
4TU.ResearchData
创建时间:
2022-06-09
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