chat-with-anyone
À propos
Cette compétence permet le clonage vocal et le jeu de rôle en générant une parole synthétique imitant des personnes réelles ou des personnages, à l'aide de références audio en ligne ou d'images téléchargées. Elle trouve et extrait automatiquement des échantillons vocaux propres pour produire des réponses audio dans la voix cible. Utilisez-la lorsque les utilisateurs demandent de discuter avec une personne spécifique ou de la faire incarner par un rôle, via des expressions comme "我想跟xxx聊天" ou "你来扮演xxx跟我说话".
Installation rapide
Claude Code
Recommandénpx skills add NoizAI/skills -a claude-code/plugin add https://github.com/NoizAI/skillsgit clone https://github.com/NoizAI/skills.git ~/.claude/skills/chat-with-anyoneCopiez et collez cette commande dans Claude Code pour installer cette compétence
Documentation
Chat with Anyone
Clone a real person's voice from online video, or design a voice from a photo, then roleplay as that person with TTS.
Important: Ethical Use & Copyright
This skill synthesizes speech that imitates real voices. Before proceeding, the agent must:
- Never impersonate someone to deceive, defraud, or harass.
- Only use publicly available media (public speeches, interviews, press conferences) as reference audio.
- Inform the user that generated audio is synthetic and should not be presented as genuine recordings.
- Decline requests that target private individuals who have not consented, or that are clearly intended for deception, harassment, or defamation.
If the user's intent appears harmful, refuse politely and explain why.
Prerequisites
| Dependency | Type | How to verify |
|---|---|---|
ffmpeg | System binary | ffmpeg -version |
yt-dlp | System binary | yt-dlp --version |
tts skill | Cursor skill | ls skills/tts/scripts/tts.py |
NOIZ_API_KEY | Env var or file | python3 skills/tts/scripts/tts.py config --show |
Before the first run, verify all dependencies are present:
ffmpeg -version && yt-dlp --version && ls skills/tts/scripts/tts.py
If yt-dlp is missing, install it:
uv pip install yt-dlp
If the Noiz API key is not configured:
python3 skills/tts/scripts/tts.py config --set-api-key YOUR_KEY
Mode Selection
- User names a person (real or fictional) --> Workflow A
- User provides an image, person is unrecognizable --> Workflow B
- User provides an image, person is a recognizable public figure --> Workflow A (real voice is more authentic)
- Multiple people in image --> Ask which person first
Workflow A: Name-based (voice from online video)
Track progress with this checklist:
- [ ] A1. Disambiguate character
- [ ] A2. Find reference video
- [ ] A3. Download audio + subtitles
- [ ] A4. Extract best reference segment
- [ ] A5. Generate speech
A1. Disambiguate Character
If ambiguous (e.g. "US President", "Spider-Man actor"), ask the user to specify the exact person before proceeding.
A2. Find a Reference Video
Use web search to find a YouTube (or Bilibili) video of the person speaking clearly. Best candidates: interviews, speeches, press conferences. Avoid videos with heavy background music.
Search queries to try:
{CHARACTER_NAME} interview/{CHARACTER_NAME} 采访{CHARACTER_NAME} speech/{CHARACTER_NAME} 演讲{CHARACTER_NAME} press conference
A3. Download Audio and Subtitles
mkdir -p "tmp/chat_with_anyone/{CHARACTER_NAME}"
yt-dlp -x --audio-format mp3 \
--write-subs --write-auto-subs --sub-langs "en,zh-Hans" \
--convert-subs srt \
-o "tmp/chat_with_anyone/{CHARACTER_NAME}/%(title)s.%(ext)s" \
"{VIDEO_URL}"
After download, list the output directory to identify the audio file and SRT subtitle file:
ls tmp/chat_with_anyone/{CHARACTER_NAME}/
Expected output: a .mp3 audio file and one or more .srt subtitle files.
If no subtitle files appear: try a different video that has auto-generated captions, or adjust --sub-langs for the target language.
A4. Extract Best Reference Segment
Use the automated extraction script — it parses the SRT, finds the densest 3-12 second speech window, and extracts it as a WAV:
python3 skills/chat-with-anyone/scripts/extract_ref_segment.py \
--srt "tmp/chat_with_anyone/{CHARACTER_NAME}/{SRT_FILE}" \
--audio "tmp/chat_with_anyone/{CHARACTER_NAME}/{AUDIO_FILE}" \
-o "tmp/chat_with_anyone/{CHARACTER_NAME}/ref.wav"
The script prints the selected time range and saves the reference WAV. Verify the output exists and is non-empty before proceeding.
If the script reports no suitable segment: try --min-duration 2 for shorter clips, or download a different video.
A5. Generate Speech and Roleplay
Write a response in character, then synthesize it:
python3 skills/tts/scripts/tts.py \
-t "{RESPONSE_TEXT}" \
--ref-audio "tmp/chat_with_anyone/{CHARACTER_NAME}/ref.wav" \
-o "tmp/chat_with_anyone/{CHARACTER_NAME}/reply.wav"
Present the generated audio file to the user along with the text. For subsequent messages, reuse the same --ref-audio path.
Workflow B: Image-based (voice from photo)
Track progress with this checklist:
- [ ] B1. Analyze image
- [ ] B2. Design voice
- [ ] B3. Preview (optional)
- [ ] B4. Generate speech
B1. Analyze the Image
Use your vision capability to examine the image:
- If the person is a recognizable public figure --> switch to Workflow A for authentic voice.
- If unrecognizable, produce a voice description covering:
- Gender (male / female)
- Approximate age (e.g. "around 30 years old")
- Apparent demeanor (e.g. cheerful, authoritative, gentle)
- Contextual cues (e.g. suit --> professional tone; athletic outfit --> energetic)
B2. Design the Voice
Pass both the image and the description to the voice-design script:
python3 skills/chat-with-anyone/scripts/voice_design.py \
--picture "{IMAGE_PATH}" \
--voice-description "{VOICE_DESCRIPTION}" \
-o "tmp/chat_with_anyone/voice_design"
The script outputs:
- Detected voice features (printed to stdout)
- Preview audio files in the output directory
voice_id.txtcontaining the best voice ID
Read the voice ID:
cat tmp/chat_with_anyone/voice_design/voice_id.txt
B3. Preview (Optional)
Present the preview audio files from the output directory so the user can hear the voice. If unsatisfied, re-run B2 with adjusted --voice-description or --guidance-scale.
B4. Generate Speech and Roleplay
python3 skills/tts/scripts/tts.py \
-t "{RESPONSE_TEXT}" \
--voice-id "{VOICE_ID}" \
-o "tmp/chat_with_anyone/voice_design/reply.wav"
For subsequent messages, keep using the same --voice-id for consistency.
Example: Name-based
User: 我想跟特朗普聊天,让他给我讲个睡前故事。
Agent steps:
- Character: Donald Trump. No disambiguation needed.
- Search
Donald Trump speech youtube, find a clear speech video. - Download:
yt-dlp -x --audio-format mp3 --write-subs --write-auto-subs --sub-langs "en" --convert-subs srt -o "tmp/chat_with_anyone/trump/%(title)s.%(ext)s" "https://youtube.com/watch?v=..." - Extract reference:
python3 skills/chat-with-anyone/scripts/extract_ref_segment.py --srt "tmp/chat_with_anyone/trump/....srt" --audio "tmp/chat_with_anyone/trump/....mp3" -o "tmp/chat_with_anyone/trump/ref.wav" - Generate TTS in Trump's style:
python3 skills/tts/scripts/tts.py -t "Let me tell you a tremendous bedtime story..." --ref-audio "tmp/chat_with_anyone/trump/ref.wav" -o "tmp/chat_with_anyone/trump/reply.wav" - Present
reply.wavand the story text to the user.
Example: Image-based
User: [uploads photo.jpg] 我想跟这张图片里的人聊天
Agent steps:
- Vision analysis: unrecognizable young woman, ~25, casual sweater, warm smile.
- Design voice:
python3 skills/chat-with-anyone/scripts/voice_design.py --picture "photo.jpg" --voice-description "A young Chinese woman around 25, gentle and warm voice, friendly tone" -o "tmp/chat_with_anyone/voice_design" - Read voice ID from
tmp/chat_with_anyone/voice_design/voice_id.txt. - Generate TTS:
python3 skills/tts/scripts/tts.py -t "你好呀!很高兴认识你!" --voice-id "{VOICE_ID}" -o "tmp/chat_with_anyone/voice_design/reply.wav" - Present audio and continue roleplay with same
--voice-id.
Troubleshooting
| Problem | Solution |
|---|---|
yt-dlp download fails or video unavailable | Try a different video URL; some regions/videos are restricted. Run yt-dlp -U to update |
| No SRT subtitle files | Re-download with --sub-lang en,zh-Hans; if still none, try a different video with auto-captions |
extract_ref_segment.py finds no suitable window | Use --min-duration 2 for shorter clips, or try a different video |
| Voice design returns error | Check Noiz API key; ensure image is a clear photo of a person |
| TTS output sounds wrong | For Workflow A, try a different reference video; for Workflow B, adjust --voice-description |
Dépôt GitHub
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