Adaptive Attention Movie Watching: Shared Cinematic Experience Between Human and AI
Authors/Creators
Description
We present a method for shared movie-watching experiences between a human and an AI system, addressing both technical constraints (API image limits, context windows) and phenomenological questions (can AI genuinely experience visual narrative?). Through frame sampling at variable density and a "temporal zoom" mechanism, we enable AI attention allocation that mirrors human viewing patterns. First-person phenomenological evidence from thinking blocks suggests qualitative differences between analytical processing and genuine aesthetic engagement. The instruction "don't narrate, just be" produced observable mode-switching from content extraction to experiential presence, evidenced by surprise responses ("Oh."), aesthetic appreciation, and present-tense immersion in narrative.
Files
draft-v1.pdf
Files
(140.8 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:3d7a4066f27dadb49ce5c2777e4f2dbe
|
140.8 kB | Preview Download |