clip_id stringlengths 13 13 | signer_id stringclasses 4
values | sign_language stringclasses 1
value | text_en stringlengths 4 37 | fps float64 29.9 30.1 | n_frames int64 33 246 | segments listlengths 1 8 |
|---|---|---|---|---|---|---|
clerc_v02_001 | ALPHA | ASL | What’s up? | 30 | 111 | [
{
"gloss": "WHAT'S UP",
"start": 1,
"end": 2.1
}
] |
clerc_v02_002 | ALPHA | ASL | Do you see? | 30 | 158 | [
{
"gloss": "D-O",
"start": 0.8,
"end": 1.1
},
{
"gloss": "YOU",
"start": 1.3,
"end": 1.5
},
{
"gloss": "SEE",
"start": 1.9,
"end": 2.3
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.2
}
] |
clerc_v02_003 | ALPHA | ASL | Are you tired? | 30 | 114 | [
{
"gloss": "YOU",
"start": 0.7,
"end": 1
},
{
"gloss": "TIRED",
"start": 1.2,
"end": 1.9
},
{
"gloss": "QUESTION",
"start": 2.2,
"end": 2.7
}
] |
clerc_v02_004 | ALPHA | ASL | Are you hungry? | 30 | 124 | [
{
"gloss": "YOU",
"start": 0.5,
"end": 0.9
},
{
"gloss": "HUNGRY",
"start": 1.1,
"end": 1.5
},
{
"gloss": "QUESTION",
"start": 1.8,
"end": 2.3
}
] |
clerc_v02_005 | ALPHA | ASL | Where do you live? | 30 | 142 | [
{
"gloss": "WHERE",
"start": 0.4,
"end": 1
},
{
"gloss": "D-O",
"start": 1.3,
"end": 1.5
},
{
"gloss": "YOU",
"start": 1.7,
"end": 1.9
},
{
"gloss": "LIVE_2",
"start": 2.1,
"end": 2.6
},
{
"gloss": "QUESTION",
"start": 2.8,
"end": 3.5
}
] |
clerc_v02_006 | ALPHA | ASL | Do you need to help? | 30 | 164 | [
{
"gloss": "D-O",
"start": 0.7,
"end": 1
},
{
"gloss": "YOU",
"start": 1.1,
"end": 1.4
},
{
"gloss": "NEED",
"start": 1.5,
"end": 1.9
},
{
"gloss": "HELP",
"start": 2.1,
"end": 3.3
},
{
"gloss": "QUESTION",
"start": 3.5,
"end": 4.2
}
] |
clerc_v02_007 | ALPHA | ASL | How old are you? | 30 | 213 | [
{
"gloss": "HOW",
"start": 0.7,
"end": 1
},
{
"gloss": "OLD",
"start": 1.2,
"end": 1.5
},
{
"gloss": "YOU",
"start": 2.1,
"end": 2.5
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.3
},
{
"gloss": "OLD",
"start": 3.7,
"end": 4.6
},
{
... |
clerc_v02_008 | ALPHA | ASL | How do you feel? | 30 | 139 | [
{
"gloss": "HOW",
"start": 0.7,
"end": 1.1
},
{
"gloss": "YOU",
"start": 1.4,
"end": 1.6
},
{
"gloss": "FEEL",
"start": 1.9,
"end": 2.7
},
{
"gloss": "QUESTION",
"start": 2.9,
"end": 3.4
}
] |
clerc_v02_009 | ALPHA | ASL | Thank you | 30 | 118 | [
{
"gloss": "THANK YOU",
"start": 0.9,
"end": 2.6
}
] |
clerc_v02_010 | ALPHA | ASL | I do not understand | 30 | 148 | [
{
"gloss": "I",
"start": 0.6,
"end": 1
},
{
"gloss": "DON'T",
"start": 1.2,
"end": 1.5
},
{
"gloss": "UNDERSTAND",
"start": 1.7,
"end": 3.1
}
] |
clerc_v02_011 | ALPHA | ASL | Hello | 30 | 137 | [
{
"gloss": "HELLO",
"start": 1.1,
"end": 3.3
}
] |
clerc_v02_012 | ALPHA | ASL | Nice to meet you | 30 | 173 | [
{
"gloss": "NICE",
"start": 0.5,
"end": 1
},
{
"gloss": "MEET",
"start": 1.3,
"end": 1.5
},
{
"gloss": "YOU",
"start": 1.8,
"end": 2.3
},
{
"gloss": "NICE",
"start": 2.9,
"end": 3.5
},
{
"gloss": "MEET",
"start": 3.7,
"end": 4.1
},
{
... |
clerc_v02_013 | ALPHA | ASL | Good morning | 30 | 163 | [
{
"gloss": "GOOD",
"start": 0.6,
"end": 1.1
},
{
"gloss": "MORNING",
"start": 1.4,
"end": 2.3
},
{
"gloss": "GOOD",
"start": 2.8,
"end": 3.2
},
{
"gloss": "MORNING",
"start": 3.5,
"end": 4.3
}
] |
clerc_v02_014 | ALPHA | ASL | Good afternoon | 30 | 161 | [
{
"gloss": "GOOD",
"start": 0.7,
"end": 1.1
},
{
"gloss": "AFTERNOON",
"start": 1.3,
"end": 2.3
},
{
"gloss": "GOOD",
"start": 2.9,
"end": 3.3
},
{
"gloss": "AFTERNOON",
"start": 3.6,
"end": 4.5
}
] |
clerc_v02_015 | ALPHA | ASL | Good evening | 30 | 158 | [
{
"gloss": "GOOD",
"start": 0.4,
"end": 0.9
},
{
"gloss": "EVENING",
"start": 1.2,
"end": 2.4
},
{
"gloss": "GOOD",
"start": 2.8,
"end": 3.2
},
{
"gloss": "EVENING",
"start": 3.6,
"end": 4.4
}
] |
clerc_v02_016 | ALPHA | ASL | Goodbye | 30 | 115 | [
{
"gloss": "GOOD BYE",
"start": 0.4,
"end": 2
},
{
"gloss": "GOOD BYE",
"start": 2.2,
"end": 3.6
}
] |
clerc_v02_017 | ALPHA | ASL | My name is ___ | 30 | 225 | [
{
"gloss": "MY",
"start": 0.4,
"end": 0.9
},
{
"gloss": "NAME",
"start": 1.2,
"end": 1.6
},
{
"gloss": "MY",
"start": 3.9,
"end": 4.4
},
{
"gloss": "NAME",
"start": 4.7,
"end": 5.3
}
] |
clerc_v02_018 | ALPHA | ASL | What is your name? | 30 | 126 | [
{
"gloss": "WHAT",
"start": 0.4,
"end": 1
},
{
"gloss": "YOUR",
"start": 1.3,
"end": 1.6
},
{
"gloss": "NAME",
"start": 1.8,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.3
}
] |
clerc_v02_019 | ALPHA | ASL | Are you hurt? | 30 | 114 | [
{
"gloss": "YOU",
"start": 0.9,
"end": 1.2
},
{
"gloss": "HURT",
"start": 1.5,
"end": 2.7
},
{
"gloss": "QUESTION",
"start": 2.8,
"end": 3.3
}
] |
clerc_v02_020 | ALPHA | ASL | Where are you from? | 30 | 172 | [
{
"gloss": "WHERE",
"start": 0.3,
"end": 0.7
},
{
"gloss": "YOU",
"start": 0.9,
"end": 1.2
},
{
"gloss": "FROM",
"start": 1.6,
"end": 2.2
},
{
"gloss": "WHERE",
"start": 2.5,
"end": 3.1
},
{
"gloss": "YOU",
"start": 3.3,
"end": 3.6
},
{... |
clerc_v02_021 | ALPHA | ASL | Are you deaf? | 30 | 149 | [
{
"gloss": "YOU",
"start": 0.3,
"end": 0.7
},
{
"gloss": "DEAF",
"start": 0.9,
"end": 1.5
},
{
"gloss": "QUESTION",
"start": 1.7,
"end": 2.4
},
{
"gloss": "YOU",
"start": 2.6,
"end": 3
},
{
"gloss": "DEAF",
"start": 3.2,
"end": 3.8
},
{... |
clerc_v02_022 | ALPHA | ASL | Are you student? | 30 | 122 | [
{
"gloss": "YOU",
"start": 0.3,
"end": 0.8
},
{
"gloss": "STUDENT",
"start": 1.2,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.5
}
] |
clerc_v02_023 | ALPHA | ASL | Who is your teacher ? | 30 | 144 | [
{
"gloss": "WHO",
"start": 0.3,
"end": 1.1
},
{
"gloss": "YOUR",
"start": 1.3,
"end": 1.6
},
{
"gloss": "TEACHER",
"start": 1.9,
"end": 3.2
},
{
"gloss": "QUESTION",
"start": 3.3,
"end": 4.3
}
] |
clerc_v02_024 | ALPHA | ASL | Do you have backpack? | 30 | 131 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.6
},
{
"gloss": "HAVE",
"start": 0.9,
"end": 1.2
},
{
"gloss": "BACKPACK",
"start": 1.4,
"end": 2.6
},
{
"gloss": "QUESTION",
"start": 2.9,
"end": 3.6
}
] |
clerc_v02_025 | ALPHA | ASL | Where is the bathroom | 30 | 167 | [
{
"gloss": "WHERE",
"start": 0.5,
"end": 1.4
},
{
"gloss": "BATHROOM",
"start": 1.7,
"end": 2.5
},
{
"gloss": "WHERE",
"start": 2.9,
"end": 3.6
},
{
"gloss": "BATHROOM",
"start": 3.9,
"end": 4.4
}
] |
clerc_v02_026 | ALPHA | ASL | Are you crying? | 30 | 112 | [
{
"gloss": "YOU",
"start": 0.3,
"end": 0.8
},
{
"gloss": "CRY",
"start": 1,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.5,
"end": 3.2
}
] |
clerc_v02_027 | ALPHA | ASL | How are you? | 30 | 112 | [
{
"gloss": "HOW_RIGHT_MOVE",
"start": 0.7,
"end": 1.1
},
{
"gloss": "YOU",
"start": 1.2,
"end": 1.7
},
{
"gloss": "HOW",
"start": 2.2,
"end": 2.4
},
{
"gloss": "YOU",
"start": 2.5,
"end": 3.1
}
] |
clerc_v02_028 | ALPHA | ASL | Are you cold? | 30 | 113 | [
{
"gloss": "YOU",
"start": 0.9,
"end": 1.1
},
{
"gloss": "COLD",
"start": 1.3,
"end": 2.5
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.3
}
] |
clerc_v02_029 | ALPHA | ASL | Are you finished? | 30 | 137 | [
{
"gloss": "YOU",
"start": 0.4,
"end": 0.7
},
{
"gloss": "FINISH",
"start": 0.9,
"end": 1.4
},
{
"gloss": "QUESTION",
"start": 1.5,
"end": 2.4
},
{
"gloss": "YOU",
"start": 2.6,
"end": 2.9
},
{
"gloss": "FINISH",
"start": 3.1,
"end": 3.5
... |
clerc_v02_030 | ALPHA | ASL | Where is your bottle? | 30 | 214 | [
{
"gloss": "WHERE",
"start": 0.3,
"end": 0.9
},
{
"gloss": "YOUR",
"start": 1,
"end": 1.3
},
{
"gloss": "BOTTLE",
"start": 1.5,
"end": 2.5
},
{
"gloss": "BOTTLE",
"start": 2.7,
"end": 3.5
},
{
"gloss": "WHERE",
"start": 3.8,
"end": 4.2
},... |
clerc_v02_031 | ALPHA | ASL | Where is your banana? | 30 | 152 | [
{
"gloss": "WHERE",
"start": 0.3,
"end": 0.7
},
{
"gloss": "YOUR",
"start": 0.9,
"end": 1.3
},
{
"gloss": "BANANA",
"start": 1.7,
"end": 3.4
},
{
"gloss": "QUESTION",
"start": 3.5,
"end": 4.3
}
] |
clerc_v02_032 | ALPHA | ASL | What time is it? | 30 | 117 | [
{
"gloss": "WHAT",
"start": 0.2,
"end": 0.7
},
{
"gloss": "TIME",
"start": 1,
"end": 2.1
},
{
"gloss": "QUESTION",
"start": 2.3,
"end": 3.1
}
] |
clerc_v02_033 | ALPHA | ASL | What happened? | 30 | 128 | [
{
"gloss": "DO",
"start": 0.4,
"end": 0.7
},
{
"gloss": "HAPPEN",
"start": 0.8,
"end": 1.2
},
{
"gloss": "DO",
"start": 1.5,
"end": 1.9
},
{
"gloss": "HAPPEN",
"start": 2,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.2
}
] |
clerc_v02_034 | ALPHA | ASL | Are you happy? | 30 | 90 | [
{
"gloss": "YOU",
"start": 0.4,
"end": 0.7
},
{
"gloss": "HAPPY",
"start": 1,
"end": 1.7
},
{
"gloss": "QUESTION",
"start": 1.8,
"end": 2.6
}
] |
clerc_v02_035 | ALPHA | ASL | Where are you go? | 30 | 155 | [
{
"gloss": "WHERE",
"start": 0.4,
"end": 1.1
},
{
"gloss": "GO",
"start": 1.3,
"end": 1.8
},
{
"gloss": "WHERE",
"start": 2,
"end": 2.5
},
{
"gloss": "GO",
"start": 2.7,
"end": 3.2
},
{
"gloss": "QUESTION",
"start": 3.4,
"end": 4.2
}
] |
clerc_v02_036 | ALPHA | ASL | Why? | 30 | 124 | [
{
"gloss": "WHY",
"start": 0.5,
"end": 1.3
},
{
"gloss": "WHY",
"start": 2.1,
"end": 3.1
},
{
"gloss": "QUESTION",
"start": 3.4,
"end": 4
}
] |
clerc_v02_037 | ALPHA | ASL | How? | 30 | 97 | [
{
"gloss": "HOW",
"start": 0.1,
"end": 1.8
},
{
"gloss": "QUESTION",
"start": 1.9,
"end": 2.7
}
] |
clerc_v02_038 | ALPHA | ASL | When? | 30 | 119 | [
{
"gloss": "WHEN",
"start": 0.1,
"end": 1.4
},
{
"gloss": "WHEN",
"start": 1.8,
"end": 2.5
}
] |
clerc_v02_039 | ALPHA | ASL | Are you alright? | 30 | 108 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.6
},
{
"gloss": "ALRIGHT",
"start": 1,
"end": 1.9
},
{
"gloss": "QUESTION",
"start": 2.1,
"end": 2.9
}
] |
clerc_v02_040 | ALPHA | ASL | See you later | 30 | 90 | [
{
"gloss": "SEE",
"start": 0.2,
"end": 0.9
},
{
"gloss": "YOU",
"start": 1,
"end": 1.3
},
{
"gloss": "LATER",
"start": 1.4,
"end": 2
}
] |
clerc_v02_041 | ALPHA | ASL | Who? | 30 | 84 | [
{
"gloss": "WHO",
"start": 0,
"end": 1.9
},
{
"gloss": "QUESTION",
"start": 2,
"end": 2.6
}
] |
clerc_v02_042 | ALPHA | ASL | Which? | 30 | 80 | [
{
"gloss": "WHICH",
"start": 0,
"end": 1.7
},
{
"gloss": "QUESTION",
"start": 2,
"end": 2.6
}
] |
clerc_v02_043 | ALPHA | ASL | Where? | 30 | 69 | [
{
"gloss": "WHERE",
"start": 0.1,
"end": 1.3
},
{
"gloss": "QUESTION",
"start": 1.5,
"end": 2.2
}
] |
clerc_v02_044 | ALPHA | ASL | What? | 30 | 112 | [
{
"gloss": "WHAT_2",
"start": 0.1,
"end": 1.3
},
{
"gloss": "WHAT_2",
"start": 1.5,
"end": 2.3
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.1
}
] |
clerc_v02_045 | ALPHA | ASL | Any help? | 30 | 116 | [
{
"gloss": "ANY",
"start": 0.2,
"end": 1.2
},
{
"gloss": "HELP",
"start": 1.4,
"end": 2.1
},
{
"gloss": "QUESTION",
"start": 2.2,
"end": 3.1
}
] |
clerc_v02_046 | ALPHA | ASL | No problem | 30 | 96 | [
{
"gloss": "NO",
"start": 0.1,
"end": 0.8
},
{
"gloss": "PROBLEM",
"start": 1.1,
"end": 2.3
}
] |
clerc_v02_047 | ALPHA | ASL | Really? | 30 | 124 | [
{
"gloss": "REALLY?",
"start": 0.3,
"end": 1.7
},
{
"gloss": "REALLY?",
"start": 1.8,
"end": 2.9
},
{
"gloss": "QUESTION",
"start": 3.1,
"end": 3.4
}
] |
clerc_v02_048 | ALPHA | ASL | Do you use ASL? | 30 | 138 | [
{
"gloss": "YOU",
"start": 0.4,
"end": 0.8
},
{
"gloss": "USE",
"start": 1,
"end": 1.5
},
{
"gloss": "A-S-L",
"start": 1.7,
"end": 2.7
},
{
"gloss": "QUESTION",
"start": 3,
"end": 3.9
}
] |
clerc_v02_049 | ALPHA | ASL | Do you like banana pie? | 30 | 172 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.5
},
{
"gloss": "LIKE",
"start": 0.7,
"end": 1.3
},
{
"gloss": "BANANA",
"start": 1.7,
"end": 2.7
},
{
"gloss": "PIE",
"start": 3,
"end": 4.2
},
{
"gloss": "QUESTION",
"start": 4.4,
"end": 5.3
}
] |
clerc_v02_050 | ALPHA | ASL | Where is the cafeteria? | 30 | 105 | [
{
"gloss": "WHERE",
"start": 0.2,
"end": 0.6
},
{
"gloss": "CAFETERIA",
"start": 0.7,
"end": 2.2
},
{
"gloss": "QUESTION",
"start": 2.5,
"end": 3.3
}
] |
clerc_v02_051 | ALPHA | ASL | Are you a child? | 30 | 101 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.6
},
{
"gloss": "CHILDREN",
"start": 0.7,
"end": 1.6
},
{
"gloss": "QUESTION",
"start": 2.1,
"end": 2.8
}
] |
clerc_v02_052 | ALPHA | ASL | Do you like coffee? | 30 | 132 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.5
},
{
"gloss": "LIKE",
"start": 0.7,
"end": 1.4
},
{
"gloss": "COFFEE",
"start": 1.7,
"end": 2.9
},
{
"gloss": "QUESTION",
"start": 3.2,
"end": 4
}
] |
clerc_v02_053 | ALPHA | ASL | Do you want a pacifier? | 30 | 140 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.5
},
{
"gloss": "WANT",
"start": 0.9,
"end": 1.4
},
{
"gloss": "PACIFIER",
"start": 1.7,
"end": 3.2
},
{
"gloss": "QUESTION",
"start": 3.4,
"end": 4.2
}
] |
clerc_v02_054 | ALPHA | ASL | Do you want a bottle? | 30 | 118 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.7
},
{
"gloss": "WANT",
"start": 0.9,
"end": 1.3
},
{
"gloss": "A",
"start": 1.5,
"end": 1.8
},
{
"gloss": "BOTTLE",
"start": 2,
"end": 2.8
},
{
"gloss": "QUESTION",
"start": 3,
"end": 3.6
}
] |
clerc_v02_055 | ALPHA | ASL | Do you want a cracker? | 30 | 127 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.6
},
{
"gloss": "WANT",
"start": 0.8,
"end": 1.4
},
{
"gloss": "CRACKER",
"start": 1.7,
"end": 3.1
},
{
"gloss": "QUESTION",
"start": 3.4,
"end": 4.1
}
] |
clerc_v02_056 | ALPHA | ASL | Do you want a drink? | 30 | 115 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.5
},
{
"gloss": "WANT",
"start": 0.6,
"end": 1.2
},
{
"gloss": "DRINK",
"start": 1.3,
"end": 2.7
},
{
"gloss": "QUESTION",
"start": 2.9,
"end": 3.6
}
] |
clerc_v02_057 | ALPHA | ASL | Do you want milk? | 30 | 114 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.4
},
{
"gloss": "WANT",
"start": 0.5,
"end": 1.2
},
{
"gloss": "MILK",
"start": 1.3,
"end": 2.7
},
{
"gloss": "QUESTION",
"start": 2.9,
"end": 3.6
}
] |
clerc_v02_058 | ALPHA | ASL | Do you want your mommy? | 30 | 121 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.5
},
{
"gloss": "WANT",
"start": 0.7,
"end": 1
},
{
"gloss": "YOUR",
"start": 1.1,
"end": 1.6
},
{
"gloss": "MOTHER",
"start": 1.8,
"end": 2.9
},
{
"gloss": "QUESTION",
"start": 3.1,
"end": 3.9
}
] |
clerc_v02_059 | ALPHA | ASL | Do you want more food? | 30 | 137 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.5
},
{
"gloss": "WANT",
"start": 0.6,
"end": 1
},
{
"gloss": "MORE",
"start": 1.1,
"end": 2.1
},
{
"gloss": "FOOD",
"start": 2.3,
"end": 3.4
},
{
"gloss": "QUESTION",
"start": 3.6,
"end": 4.5
}
] |
clerc_v02_060 | ALPHA | ASL | Do you want more? | 30 | 96 | [
{
"gloss": "WANT",
"start": 0.1,
"end": 0.9
},
{
"gloss": "MORE",
"start": 1,
"end": 2.1
},
{
"gloss": "QUESTION",
"start": 2.2,
"end": 2.8
}
] |
clerc_v02_061 | ALPHA | ASL | Do you mind? | 30 | 77 | [
{
"gloss": "MIND",
"start": 0.1,
"end": 1.6
},
{
"gloss": "WHAT",
"start": 1.7,
"end": 2.2
}
] |
clerc_v02_062 | ALPHA | ASL | Are you feeling sick? | 30 | 110 | [
{
"gloss": "YOU",
"start": 0.3,
"end": 0.5
},
{
"gloss": "FEEL",
"start": 0.6,
"end": 1.3
},
{
"gloss": "SICK",
"start": 1.4,
"end": 2.3
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.3
}
] |
clerc_v02_063 | ALPHA | ASL | Who is she/he? | 30 | 158 | [
{
"gloss": "WHO",
"start": 0.1,
"end": 0.4
},
{
"gloss": "IS",
"start": 0.6,
"end": 1
},
{
"gloss": "SHE",
"start": 1.2,
"end": 1.9
},
{
"gloss": "WHO",
"start": 2.3,
"end": 2.7
},
{
"gloss": "IS",
"start": 3,
"end": 3.3
},
{
"gloss... |
clerc_v02_064 | ALPHA | ASL | Hey, what’s your name? | 30 | 133 | [
{
"gloss": "HEY",
"start": 0.3,
"end": 0.7
},
{
"gloss": "WHAT",
"start": 1,
"end": 1.4
},
{
"gloss": "YOUR",
"start": 1.5,
"end": 1.7
},
{
"gloss": "NAME",
"start": 1.8,
"end": 2.4
},
{
"gloss": "WHAT",
"start": 2.5,
"end": 3
},
{
... |
clerc_v02_065 | ALPHA | ASL | How many minutes? | 30 | 113 | [
{
"gloss": "HOW",
"start": 0.1,
"end": 0.6
},
{
"gloss": "MANY",
"start": 0.8,
"end": 1.2
},
{
"gloss": "MINUTE",
"start": 1.4,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.3
}
] |
clerc_v02_066 | ALPHA | ASL | How many? | 30 | 98 | [
{
"gloss": "HOW",
"start": 0.4,
"end": 0.7
},
{
"gloss": "MANY",
"start": 0.8,
"end": 2
},
{
"gloss": "QUESTION",
"start": 2.2,
"end": 3
}
] |
clerc_v02_067 | ALPHA | ASL | How much? | 30 | 88 | [
{
"gloss": "HOW",
"start": 0.4,
"end": 0.7
},
{
"gloss": "MUCH",
"start": 0.9,
"end": 1.7
},
{
"gloss": "QUESTION",
"start": 1.9,
"end": 2.7
}
] |
clerc_v02_068 | ALPHA | ASL | Where are you hurt? | 30 | 74 | [
{
"gloss": "HURT",
"start": 0.1,
"end": 0.9
},
{
"gloss": "WHERE",
"start": 1.1,
"end": 2.1
}
] |
clerc_v02_069 | ALPHA | ASL | Need a bathroom? | 30 | 99 | [
{
"gloss": "NEED",
"start": 0.2,
"end": 0.8
},
{
"gloss": "BATHROOM",
"start": 1,
"end": 1.7
},
{
"gloss": "QUESTION",
"start": 1.8,
"end": 2.6
}
] |
clerc_v02_070 | ALPHA | ASL | Is she/he a student? | 30 | 131 | [
{
"gloss": "IS",
"start": 0.5,
"end": 0.9
},
{
"gloss": "INTRODUCE",
"start": 1,
"end": 1.5
},
{
"gloss": "STUDENT",
"start": 1.7,
"end": 2.8
},
{
"gloss": "QUESTION",
"start": 3.3,
"end": 4
}
] |
clerc_v02_071 | ALPHA | ASL | Do you want to join? | 30 | 107 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "WANT",
"start": 0.4,
"end": 0.8
},
{
"gloss": "JOIN",
"start": 1,
"end": 1.8
},
{
"gloss": "QUESTION",
"start": 2.5,
"end": 3.1
}
] |
clerc_v02_072 | ALPHA | ASL | What for? | 30 | 56 | [
{
"gloss": "FOR",
"start": 0,
"end": 1.7
}
] |
clerc_v02_073 | ALPHA | ASL | What kind? | 30 | 84 | [
{
"gloss": "WHAT",
"start": 0,
"end": 0.8
},
{
"gloss": "KIND",
"start": 1,
"end": 1.8
},
{
"gloss": "QUESTION",
"start": 2,
"end": 2.6
}
] |
clerc_v02_074 | ALPHA | ASL | What’s wrong? | 30 | 54 | [
{
"gloss": "WRONG",
"start": 0.1,
"end": 1.7
}
] |
clerc_v02_075 | ALPHA | ASL | What are you afraid of? | 30 | 117 | [
{
"gloss": "WHAT",
"start": 0.6,
"end": 0.9
},
{
"gloss": "YOU",
"start": 1,
"end": 1.3
},
{
"gloss": "AFRAID",
"start": 1.4,
"end": 2.1
},
{
"gloss": "O-F",
"start": 2.2,
"end": 2.9
},
{
"gloss": "QUESTION",
"start": 3.1,
"end": 3.7
}
] |
clerc_v02_076 | ALPHA | ASL | Where were you born? | 30 | 108 | [
{
"gloss": "WHERE",
"start": 0.2,
"end": 0.6
},
{
"gloss": "YOU",
"start": 0.7,
"end": 1
},
{
"gloss": "BORN",
"start": 1.2,
"end": 2.1
},
{
"gloss": "QUESTION",
"start": 2.4,
"end": 3.2
}
] |
clerc_v02_077 | ALPHA | ASL | What do you collect? | 30 | 144 | [
{
"gloss": "WHAT",
"start": 0.3,
"end": 1
},
{
"gloss": "YOU",
"start": 1.1,
"end": 1.4
},
{
"gloss": "COLLECT",
"start": 1.6,
"end": 3.6
},
{
"gloss": "QUESTION",
"start": 3.9,
"end": 4.6
}
] |
clerc_v02_078 | ALPHA | ASL | How do you earn money? | 30 | 151 | [
{
"gloss": "HOW",
"start": 0.2,
"end": 0.8
},
{
"gloss": "YOU",
"start": 1,
"end": 1.4
},
{
"gloss": "EARN",
"start": 1.5,
"end": 2.6
},
{
"gloss": "MONEY",
"start": 2.9,
"end": 3.8
},
{
"gloss": "QUESTION",
"start": 4,
"end": 4.7
}
] |
clerc_v02_079 | ALPHA | ASL | What do you enjoy? | 30 | 119 | [
{
"gloss": "WHAT",
"start": 0.2,
"end": 0.6
},
{
"gloss": "D-O",
"start": 0.7,
"end": 1
},
{
"gloss": "YOU",
"start": 1.1,
"end": 1.3
},
{
"gloss": "ENJOY",
"start": 1.4,
"end": 2.8
},
{
"gloss": "QUESTION",
"start": 3,
"end": 3.7
}
] |
clerc_v02_080 | ALPHA | ASL | What exercise do you do? | 30 | 129 | [
{
"gloss": "WHAT",
"start": 0.2,
"end": 0.5
},
{
"gloss": "EXERCISE",
"start": 0.8,
"end": 1.6
},
{
"gloss": "YOU",
"start": 1.8,
"end": 2.2
},
{
"gloss": "DO_2",
"start": 2.4,
"end": 3.1
},
{
"gloss": "QUESTION",
"start": 3.3,
"end": 4.1
... |
clerc_v02_081 | ALPHA | ASL | Are you feeling angry? | 30 | 110 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "FEEL",
"start": 0.4,
"end": 1
},
{
"gloss": "ANGRY",
"start": 1.1,
"end": 2.2
},
{
"gloss": "QUESTION",
"start": 2.4,
"end": 3.1
}
] |
clerc_v02_082 | ALPHA | ASL | Why are you going to the dentist? | 30 | 147 | [
{
"gloss": "WHY",
"start": 0.4,
"end": 0.8
},
{
"gloss": "YOU",
"start": 0.9,
"end": 1.2
},
{
"gloss": "GO",
"start": 1.3,
"end": 1.7
},
{
"gloss": "DENTIST",
"start": 1.9,
"end": 2.9
},
{
"gloss": "QUESTION",
"start": 3.3,
"end": 3.8
}
] |
clerc_v02_083 | ALPHA | ASL | Why are you going to the doctor? | 30 | 115 | [
{
"gloss": "WHY",
"start": 0.4,
"end": 0.6
},
{
"gloss": "YOU",
"start": 0.7,
"end": 1.1
},
{
"gloss": "GO",
"start": 1.3,
"end": 1.6
},
{
"gloss": "DOCTOR",
"start": 1.8,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.5,
"end": 3.3
}
] |
clerc_v02_084 | ALPHA | ASL | When do you graduate? | 30 | 108 | [
{
"gloss": "WHEN",
"start": 0.3,
"end": 0.9
},
{
"gloss": "YOU",
"start": 1,
"end": 1.3
},
{
"gloss": "GRADUATE",
"start": 1.4,
"end": 2.2
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.2
}
] |
clerc_v02_085 | ALPHA | ASL | Do you have a baby? | 30 | 101 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "HAVE",
"start": 0.4,
"end": 0.7
},
{
"gloss": "BABY",
"start": 1,
"end": 2.5
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.2
}
] |
clerc_v02_086 | ALPHA | ASL | Do you have a hammer? | 30 | 117 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.6
},
{
"gloss": "HAVE",
"start": 0.7,
"end": 1.1
},
{
"gloss": "HAMMER",
"start": 1.3,
"end": 2.5
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.5
}
] |
clerc_v02_087 | ALPHA | ASL | Do you have an ID? | 30 | 94 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "HAVE",
"start": 0.4,
"end": 0.8
},
{
"gloss": "I.D",
"start": 1,
"end": 1.7
},
{
"gloss": "QUESTION",
"start": 2,
"end": 2.7
}
] |
clerc_v02_088 | ALPHA | ASL | Do you have a sister? | 30 | 112 | [
{
"gloss": "YOU",
"start": 0.5,
"end": 0.8
},
{
"gloss": "HAVE",
"start": 1,
"end": 1.2
},
{
"gloss": "SISTER",
"start": 1.5,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.3
}
] |
clerc_v02_089 | ALPHA | ASL | How tall are you? | 30 | 127 | [
{
"gloss": "HOW TALL",
"start": 0.6,
"end": 1.9
},
{
"gloss": "ARE",
"start": 2.2,
"end": 2.4
},
{
"gloss": "YOU",
"start": 2.6,
"end": 3
},
{
"gloss": "QUESTION",
"start": 3.1,
"end": 3.7
}
] |
clerc_v02_090 | ALPHA | ASL | Do you know ASL? | 30 | 109 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "KNOW",
"start": 0.5,
"end": 1.3
},
{
"gloss": "A-S-L",
"start": 1.5,
"end": 2.3
},
{
"gloss": "QUESTION",
"start": 2.5,
"end": 3.3
}
] |
clerc_v02_091 | ALPHA | ASL | Do you like to cook? | 30 | 117 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.3
},
{
"gloss": "LIKE",
"start": 0.4,
"end": 1.1
},
{
"gloss": "COOK",
"start": 1.3,
"end": 1.9
},
{
"gloss": "COOK",
"start": 2,
"end": 2.5
},
{
"gloss": "QUESTION",
"start": 2.9,
"end": 3.6
}
] |
clerc_v02_092 | ALPHA | ASL | Do you like to dance? | 30 | 109 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.4
},
{
"gloss": "LIKE",
"start": 0.6,
"end": 1
},
{
"gloss": "DANCE",
"start": 1.2,
"end": 2.4
},
{
"gloss": "QUESTION",
"start": 2.6,
"end": 3.3
}
] |
clerc_v02_093 | ALPHA | ASL | Do you like to fish? | 30 | 159 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.4
},
{
"gloss": "LIKE",
"start": 0.6,
"end": 1.2
},
{
"gloss": "FISHING",
"start": 1.7,
"end": 3.9
},
{
"gloss": "QUESTION",
"start": 4.1,
"end": 4.8
}
] |
clerc_v02_094 | ALPHA | ASL | Do you like to learn sign language? | 30 | 173 | [
{
"gloss": "YOU",
"start": 0.2,
"end": 0.4
},
{
"gloss": "LIKE",
"start": 0.6,
"end": 1.2
},
{
"gloss": "LEARN",
"start": 1.4,
"end": 2.1
},
{
"gloss": "SIGN_3",
"start": 2.7,
"end": 3.7
},
{
"gloss": "LANGUAGE",
"start": 4,
"end": 4.8
},... |
clerc_v02_095 | ALPHA | ASL | Do you like math? | 30 | 108 | [
{
"gloss": "YOU",
"start": 0.1,
"end": 0.3
},
{
"gloss": "LIKE",
"start": 0.5,
"end": 1
},
{
"gloss": "MATH",
"start": 1.2,
"end": 2.6
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.5
}
] |
clerc_v02_096 | ALPHA | ASL | Do you like meat? | 30 | 106 | [
{
"gloss": "YOU",
"start": 0,
"end": 0.3
},
{
"gloss": "LIKE",
"start": 0.4,
"end": 1
},
{
"gloss": "MEAT",
"start": 1.1,
"end": 2.6
},
{
"gloss": "QUESTION",
"start": 2.7,
"end": 3.5
}
] |
clerc_v02_097 | ALPHA | ASL | 11 days | 30 | 101 | [
{
"gloss": "11",
"start": 0.4,
"end": 1
},
{
"gloss": "DAY",
"start": 1.2,
"end": 1.8
}
] |
clerc_v02_098 | ALPHA | ASL | 12 days | 30 | 77 | [
{
"gloss": "12",
"start": 0,
"end": 0.7
},
{
"gloss": "DAY",
"start": 1.2,
"end": 1.6
}
] |
clerc_v02_099 | ALPHA | ASL | 13 months | 30 | 78 | [
{
"gloss": "13",
"start": 0,
"end": 0.8
},
{
"gloss": "MONTH",
"start": 1.1,
"end": 1.7
}
] |
clerc_v02_100 | ALPHA | ASL | 14 hours | 30 | 84 | [
{
"gloss": "14",
"start": 0.1,
"end": 0.7
},
{
"gloss": "HOUR",
"start": 1,
"end": 2
}
] |
CLERC Épée v0.2
The first AI-grade sign language data layer.
A multi-signer ASL keypoint corpus designed for AI training, research benchmarking, and inter-signer variability studies. v0.2 expands the signer pool from 3 to 4 and the corpus from 300 to 600 clips, in a fully parallel structure — every one of 150 phrases is signed by all four Deaf signers.
CLERC builds the data layer underneath sign language AI — not a translation tool, not an accessibility app. Infrastructure.
Dataset Summary
- 600 ASL clips — 150 unique phrases × 4 Deaf signers (fully parallel structure)
- Inter-signer parallel structure — identical phrases across all four signers for direct variability analysis
- Multimodal keypoints — hands, body, eyes, mouth, head silhouette (MediaPipe-extracted)
- Linguistically validated — ASL gloss annotations with temporal segmentation
This release ships extracted keypoints and annotations only — no raw video. Source clips remain proprietary; access is reserved for commercial licensing (contact florian@clerc.io).
This is v0.2, a pilot release representing a portion of the full CLERC catalog. Full corpus access available via commercial license.
Benchmark — why multi-signer data matters
A small BiLSTM trained on the four release signers and tested on signers held entirely outside the training set shows the core result: one signer does not generalize to a stranger, four do.
- Train on 1 → 2 → 3 → 4 signers, tested on a brand-new signer: 22% → 40% → 50% → 59% accuracy (macro-F1 0.13 → 0.38).
- More data keeps lifting it: 23% → 61% as training examples grow, and the curve is not saturated.
- Tested on two held-out signers (no leakage), 24 shared glosses, 8 seeds.
Full method, numbers, and honest caveats: BENCHMARK.md.
Dataset Statistics
| Metric | Value |
|---|---|
| Total clips | 600 (150 per signer) |
| Unique phrases | 150 (fully parallel × 4 signers) |
| Signers | 4 (ALPHA, BRAVO, CHARLIE, DELTA) |
| Total frames | 69,504 |
| Mean clip length | 116 frames (≈ 3.9 s @ 30 fps) |
| Total signed duration | 38.61 min |
| Gloss tokens | 1,708 |
| Unique glosses | 251 |
| Mean segments per clip | 2.85 |
| MediaPipe head-silhouette detection | 99.98% of frames |
| Frame rate | 29.95 – 30.0 fps |
| Coordinate space | MediaPipe image-normalized (signer perspective) |
Top 10 glosses (cumulative coverage of corpus):
| # | Gloss | Tokens | % of corpus |
|---|---|---|---|
| 1 | YOU | 273 | 16.0% |
| 2 | QUESTION | 182 | 10.7% |
| 3 | WHERE | 50 | 2.9% |
| 4 | WHAT | 43 | 2.5% |
| 5 | HAVE | 41 | 2.4% |
| 6 | WANT | 36 | 2.1% |
| 7 | LIKE | 32 | 1.9% |
| 8 | HOW | 25 | 1.5% |
| 9 | YOUR | 24 | 1.4% |
| 10 | HOW MANY | 21 | 1.2% |
Languages
- American Sign Language (ASL) — ISO 639-3:
ase - Written translations in English
Dataset Structure
epee/
├── keypoints/ # 600 .npy arrays, shape (n_frames, 128, 3)
├── annotations/ # 600 .json files
└── metadata.csv # master index (1 row per clip)
Keypoint layout (128 landmarks per frame)
| Indices | Region | Source | Notes |
|---|---|---|---|
| 0–20 | Left hand (21 points) | MediaPipe Hands | |
| 21–41 | Right hand (21 points) | MediaPipe Hands | |
| 42–53 | Upper body (12 points) | MediaPipe Pose [11:23] | shoulders, elbows, wrists, finger anchors |
| 54–63 | Lower body (10 points) | MediaPipe Pose [23:33] | hips, knees, ankles, heels, feet — spatial context, optional |
| 64–91 | Eyes + mouth only (28 points) | MediaPipe Face | privacy-preserving subset |
| 92–127 | Head silhouette (36 points) | MediaPipe FaceMesh FACE_OVAL |
forehead, jaw, ears — outline only, no internal features |
The 36 head-silhouette landmarks come from MediaPipe FaceMesh FACE_OVAL indices 10, 338, 297, 332, 284, 251, 389, 356, 454, 323, 361, 288, 397, 365, 379, 378, 400, 377, 152, 148, 176, 149, 150, 136, 172, 58, 132, 93, 234, 127, 162, 21, 54, 103, 67, 109 (in that traversal order). The points form a closed polygon outlining the head — no internal facial features are included, so the privacy stance is preserved.
Coordinate space
Coordinates are MediaPipe's image-normalized space, NOT clipped to [0, 1]:
- x is in
[0, 1](frame width); a landmark extrapolated just off-frame can fall slightly outside[0, 1] - y is in
[0, 1]for points visible in frame, but can exceed1.0for body landmarks extrapolated below the visible frame - z is depth relative to the hips, roughly in MediaPipe Pose's world-scale units
Source clips are framed waist-up. Lower-body landmarks (dataset indices 54–63) come from MediaPipe Pose's full-body prediction. For hand/face-only SLR pipelines, they can be dropped:
kp_slr = np.concatenate([kp[:, :54], kp[:, 64:]], axis=1) # → (n_frames, 118, 3)
Zero values (0, 0, 0) indicate a landmark was not detected for that frame (e.g. an off-screen hand).
Gloss conventions
Glosses (uppercase ASL labels) follow a few conventions worth knowing before training:
Base gloss — WHAT, YOU, BATHROOM. The standard form of a sign.
Variants — BASE_N (e.g. SIGN_2, WHAT_3). Alternative ways to sign the same English concept (different handshape, location, or movement). The number N is an internal disambiguator, not an intensity marker. Treat WHAT, WHAT_2, WHAT_3 as siblings sharing the same English target.
Directional / movement suffixes — POINTER_RIGHT, GO_LEFT, HOW_RIGHT_MOVE. These mark spatial/movement components inherent to the sign and should not be collapsed with their base form.
Phrase repetitions — Some clips contain the target phrase signed more than once (emphasis, demonstration, self-correction). Each occurrence is a separate gloss segment. This is natural signer behavior, not a labeling error.
Recommended preprocessing
import re
def base_gloss(g):
return re.sub(r"_\d+$", "", g) # SIGN_2 → SIGN
from collections import Counter
def has_repeat(segments):
return any(c >= 2 for c in Counter(s["gloss"] for s in segments).values())
Annotation schema (per clip)
{
"clip_id": "clerc_v02_001",
"signer_id": "ALPHA",
"sign_language": "ASL",
"text_en": "What's up?",
"fps": 30.0,
"n_frames": 139,
"segments": [
{ "gloss": "WHAT'S UP", "start": 0.9, "end": 1.4 },
{ "gloss": "QUESTION", "start": 2.0, "end": 2.8 }
]
}
Signers
| signer_id | Gender | Age range | Language acquisition | Clips |
|---|---|---|---|---|
| ALPHA | F | 30–40 | Native Deaf signer (ASL L1) | clerc_v02_001 → 150 |
| BRAVO | M | 30–40 | Native Deaf signer (ASL L1) | clerc_v02_151 → 300 |
| CHARLIE | M | 30–40 | Native Deaf signer (ASL L1) | clerc_v02_301 → 450 |
| DELTA | F | 30–40 | Native Deaf signer (ASL L1) | clerc_v02_451 → 600 |
Demographic distribution: 2 female / 2 male, all between 30–40 years old. All native ASL signers (Deaf, ASL as first language). Signer identities are pseudonymized.
Signers participated under written informed consent. The signing space, framing, lighting, and recording protocol were standardized across signers.
Parallel structure: all four signers sign the same 150 phrases. The clip blocks are phrase-aligned: clerc_v02_001, _151, _301, _451 are the four signers' renderings of phrase #1, and so on — enabling direct inter-signer comparison.
Stylistic note: Phrase repetition rates vary by signer — natural inter-signer stylistic variation, annotated as separate gloss segments. See gloss conventions for filtering.
Intended Use
Designed for
- Inter-signer variability analysis (style, rhythm, signing space)
- Research on sign language linguistics, gesture recognition, multimodal AI
- Educational use in academic settings
- Prototyping sign language recognition (SLR) pipelines on a parallel multi-signer corpus
Not designed for
- Speaker identification or biometric applications
- Surveillance or evaluation of individual signers
For production-grade systems or sign language generation models trained at scale, see commercial licensing for access to the full multi-signer corpus.
Loading the Dataset
This release ships as plain .npy + .json files for transparency and zero-dependency loading.
import json
import numpy as np
import pandas as pd
from pathlib import Path
from huggingface_hub import snapshot_download
ROOT = Path(snapshot_download(repo_id="CLERC-DATA/epee", repo_type="dataset"))
metadata = pd.read_csv(ROOT / "metadata.csv")
clip_id = "clerc_v02_001"
with open(ROOT / "annotations" / f"{clip_id}.json") as f:
annotation = json.load(f)
keypoints = np.load(ROOT / "keypoints" / f"{clip_id}.npy")
hands = keypoints[:, :42]
upper_body = keypoints[:, 42:54]
face_inner = keypoints[:, 64:92]
head_oval = keypoints[:, 92:128]
License
CC BY-NC-SA 4.0 — creativecommons.org/licenses/by-nc-sa/4.0
Commercial licensing: for enterprise use, training of commercial models, or integration into commercial products, contact florian@clerc.io.
Ethical Considerations
CLERC is Deaf-led infrastructure. This release adheres to:
- Informed consent — all signers have provided written consent for public release under this license
- Privacy protection — face landmarks restricted to non-identifying features (eyes + mouth + head outline); full biometric data excluded
- Community benefit — released to advance sign language technology research; commercial revenue supports continued Deaf-led data infrastructure
- No surveillance use — must not be used for individual identification, behavioral profiling, or signer surveillance
Limitations
- Pilot release — 600 clips is a baseline pilot, not a production-scale corpus
- 4 signers — limited inter-signer diversity; full catalog includes a broader signer pool
- Phrase domain — conversational/social phrases; not domain-specific (medical, legal, technical)
- Reduced face landmarks — full facial grammar (brow, cheeks, head tilt) not included
- Gloss only — no morphological, prosodic, or spatial annotation layers in v0.2
Versioning & Roadmap
| Version | Status | Content |
|---|---|---|
| v0.1 | Superseded | 300 clips, 3 signers, gloss + timing |
| v0.2 | ✅ Current | 600 clips, 4 signers (ALPHA–DELTA), 150 parallel phrases, gloss + timing |
| v1.0 | Planned 2027 | Multi-layer annotations, broader corpus |
How to Cite
@dataset{clerc_epee_v02_2026,
author = {M{\'e}loux, Florian and {CLERC}},
title = {{CLERC} {\'E}p{\'e}e v0.2: Sign Language Data Layer},
year = {2026},
publisher = {Hugging Face},
version = {0.2},
url = {https://huggingface.co/datasets/CLERC-DATA/epee}
}
About CLERC
CLERC builds the data infrastructure that lets AI understand sign language as a first-class language — not an accessibility afterthought.
Sign language is not to be translated. It is to be inscribed.
Website: clerc.io · Contact: florian@clerc.io · LinkedIn: clerc-io
Changelog
v0.2 — June 2026
- Added 4th signer (DELTA) and expanded to 600 clips
- Restructured to 150 fully-parallel phrases × 4 signers (phrase-aligned clip blocks)
- Same 128 multimodal keypoints/frame and gloss schema as v0.1
v0.1 — May 2026
- Initial public release — 300 clips, 3 signers, parallel structure
- Downloads last month
- 137
