--- license: apache-2.0 --- # Dataset Card for the RealTalk Video Dataset Thank you for your interest in the RealTalk dataset! RealTalk consists of 692 in-the-wild videos of dyadic (i.e. two person) conversations, curated with the goal of advancing multimodal communication research in computer vision. If you find our dataset useful, please cite ``` @inproceedings{geng2023affective, title={Affective Faces for Goal-Driven Dyadic Communication}, author={Geng, Scott and Teotia, Revant and Tendulkar, Purva and Menon, Sachit and Vondrick, Carl}, year={2023} } ``` --------------------------------------------------------------------------------------------------------------------------------------- ## Dataset Details The dataset contains 692 full-length videos scraped from [The Skin Deep](https://www.youtube.com/c/TheSkinDeep), a public YouTube channel that captures long-form, unscripted conversations between diverse indivudals about different facets of the human experience. We also include associated annotations; we detail all files present in the dataset below. ### File Overview General notes: * All frame numbers are indexed from 0. * We denote 'p0' as the person on the left side of the video, and 'p1' as the person on the right side. * denotes the unique 11 digit video ID assigned by YouTube to a specific video. #### [0] videos/videos_{xx}.tar Contains the full-length raw videos that the dataset is created from in shards of 50. Each video is stored at 25 fps in ```avi``` format. Each video is stored with filename ```.avi``` (e.g., ```5hxY5Svr2aM.avi```). #### [1] audio.tar.gz Contains audio files extracted from the videos, stored in ```mp3``` format. #### [2] asr.tar.gz Contains ASR outputs of [Whisper](https://github.com/openai/whisper) for each video. Subtitles for video ```.avi``` are stored in the file ```.json``` as the dictionary ``` { 'text': 'segments': 'language': } ``` #### [3.0] benchmark/train_test_split.json This json file describes the clips used as the benchmark train/test split in our paper. The file stores the dictionary ``` { 'train': [list of train samples], 'test': [list of test samples] } ``` where each entry in the list is another dictionary with format ``` { 'id': [video_id, start_frame (inclusive), end_frame (exclusive)], 'speaker': 'p0'|'p1' 'listener': 'p0'|'p1' 'asr': str } ``` The ASR of the clip is computed with [Whisper](https://github.com/openai/whisper). #### [3.1] benchmark/embeddings.pkl Pickle file containing visual embeddings of the listener frames in the training/testing clips, as computed by several pretrained face models implemented in [deepface](https://github.com/serengil/deepface). The file stores a dictionary with format ``` { f'{video_id}.{start_frame}.{end_frame}:{ { : , : , ... } ... } ``` #### [4] annotations.tar.gz Contains face bounding box and active speaker annotations for every frame of each video. Annotations for video ```.avi``` are contained in file ```.json```, which stores a nested dictionary structure: ``` {str(frame_number):{ 'people':{ 'p0':{'score': float, 'bbox': array} 'p1':{'score': float, 'bbox': array} } 'current_speaker': 'p0'|'p1'|None } ... } ``` The 'score' field stores the active speaker score as predicted by [TalkNet-ASD](https://github.com/TaoRuijie/TalkNet-ASD); larger positive values indicate a higher probability that the person is speaking. Note also that the 'people' subdictionary may or may not contain the keys 'p0', 'p1', depending on who is visible in the frame. #### [5] emoca.tar.gz Contains [EMOCA](https://emoca.is.tue.mpg.de/) embeddings for almost all frames in all the videos. The embeddings for```.avi``` are contained in the pickle file ```.pkl```, which has dictionary structure ``` { int(frame_number):{ 'p0': , 'p1': } ... } ``` Note that some frames may be missing embeddings due to occlusions or failures in face detection. ## Dataset Card Authors Scott Geng ## Dataset Card Contact sgeng@cs.washington.edu