Image features from a small local region often give strong evidence in person re-identification task. However, CNN suffers from paying too much attention on the most salient local areas, thus ignoring other discriminative clues, e.g., hair, shoes or logos on clothes. In this work, we propose a Progressive Multi-stage feature Mix network (PMM), which enables the model to find out the more precise and diverse features in a progressive manner. Specifically, (i) to enforce the model to look for different clues in the image, we adopt a multi-stage classifier and expect that the model is able to focus on a complementary region in each stage. (ii) we propose an Attentive feature Hard-Mix (A-Hard-Mix) to replace the salient feature blocks by the negative example in the current batch, whose label is different from the current sample. (iii) extensive experiments have been carried out on reID datasets such as the Market-1501, DukeMTMCreID and CUHK03, showing that the proposed method can boost the re-identification performance significantly.
@misc{5883-21,
url = {https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification},
author = { },
publisher = {IEEE Signal Processing Society SigPort},
title = {PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION},
year = {2021}
}
TY - DATA
T1 - PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION
AU -
PY - 2021
PB - IEEE Signal Processing Society SigPort
UR - https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification
ER -
.
(2021).
PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION.
IEEE Signal Processing Society SigPort.
https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification
,
2021.
PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION.
Available at:
https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification.
1. .
PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION [Internet].
IEEE Signal Processing Society SigPort; 2021.
Available from :
https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification
.
"PROGRESSIVE MULTI-STAGE FEATURE MIX FOR PERSON RE-IDENTIFICATION."
https://sigport.org/documents/progressive-multi-stage-feature-mix-person-re-identification
Comments
Image features from a small
Image features from a small local region often give strong evidence in person re-identification task. However, CNN suffers from paying too much attention on the most salient local areas, thus ignoring other discriminative clues, e.g., hair, shoes or logos on clothes. In this work, we propose a Progressive Multi-stage feature Mix network (PMM), which enables the model to find out the more precise and diverse features in a progressive manner. Specifically, (i) to enforce the model to look for different clues in the image, we adopt a multi-stage classifier and expect that the model is able to focus on a complementary region in each stage. (ii) we propose an Attentive feature Hard-Mix (A-Hard-Mix) to replace the salient feature blocks by the negative example in the current batch, whose label is different from the current sample. (iii) extensive experiments have been carried out on reID datasets such as the Market-1501, DukeMTMCreID and CUHK03, showing that the proposed method can boost the re-identification performance significantly.