Speaker-attributed automatic speech recognition (SA-ASR) improves the
accuracy and applicability of multi-speaker ASR systems in real-world scenarios
by assigning speaker labels to transcribed texts. However, SA-ASR poses unique
challenges due to factors such as speaker overlap, speaker variability,
background noise, and reverberation. In this study, we propose PP-MeT system, a
real-world personalized prompt based meeting transcription system, which
consists of a clustering system, target-speaker voice activity detection
(TS-VAD), and TS-ASR. Specifically, we utilize target-speaker embedding as a
prompt in TS-VAD and TS-ASR modules in our proposed system. In constrast with
previous system, we fully leverage pre-trained models for system
initialization, thereby bestowing our approach with heightened generalizability
and precision. Experiments on M2MeT2.0 Challenge dataset show that our system
achieves a cp-CER of 11.27% on the test set, ranking first in both fixed and
open training conditions