CLIP-HandID: Vision-Language Model for Hand-Based Person Identification
Journal:
arXiv
Published Date:
Jun 14, 2025
Abstract
This paper introduces a new approach to person identification based on hand
images, designed specifically for criminal investigations. The method is
particularly valuable in serious crimes like sexual abuse, where hand images
are often the sole identifiable evidence available. Our proposed method,
CLIP-HandID, leverages pre-trained foundational vision-language model,
particularly CLIP, to efficiently learn discriminative deep feature
representations from hand images given as input to the image encoder of CLIP
using textual prompts as semantic guidance. We propose to learn pseudo-tokens
that represent specific visual contexts or appearance attributes using textual
inversion network since labels of hand images are indexes instead text
descriptions. The learned pseudo-tokens are incorporated into textual prompts
which are given as input to the text encoder of the CLIP to leverage its
multi-modal reasoning to enhance its generalization for identification. Through
extensive evaluations on two large, publicly available hand datasets with
multi-ethnic representation, we show that our method substantially surpasses
existing approaches.