Query-Guided Networks for Few-shot Fine-grained Classification and Person Search
Few-shot fine-grained classification and person search appear as distinct tasks and literature has treated them separately. But a closer look unveils important similarities: both tasks target categories that can only be discriminated by specific object details; and the relevant models should general...
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creator | Munjal, Bharti Flaborea, Alessandro Amin, Sikandar Tombari, Federico Galasso, Fabio |
description | Few-shot fine-grained classification and person search appear as distinct
tasks and literature has treated them separately. But a closer look unveils
important similarities: both tasks target categories that can only be
discriminated by specific object details; and the relevant models should
generalize to new categories, not seen during training.
We propose a novel unified Query-Guided Network (QGN) applicable to both
tasks. QGN consists of a Query-guided Siamese-Squeeze-and-Excitation subnetwork
which re-weights both the query and gallery features across all network layers,
a Query-guided Region Proposal subnetwork for query-specific localisation, and
a Query-guided Similarity subnetwork for metric learning.
QGN improves on a few recent few-shot fine-grained datasets, outperforming
other techniques on CUB by a large margin. QGN also performs competitively on
the person search CUHK-SYSU and PRW datasets, where we perform in-depth
analysis. |
doi_str_mv | 10.48550/arxiv.2209.10250 |
format | Article |
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tasks and literature has treated them separately. But a closer look unveils
important similarities: both tasks target categories that can only be
discriminated by specific object details; and the relevant models should
generalize to new categories, not seen during training.
We propose a novel unified Query-Guided Network (QGN) applicable to both
tasks. QGN consists of a Query-guided Siamese-Squeeze-and-Excitation subnetwork
which re-weights both the query and gallery features across all network layers,
a Query-guided Region Proposal subnetwork for query-specific localisation, and
a Query-guided Similarity subnetwork for metric learning.
QGN improves on a few recent few-shot fine-grained datasets, outperforming
other techniques on CUB by a large margin. QGN also performs competitively on
the person search CUHK-SYSU and PRW datasets, where we perform in-depth
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tasks and literature has treated them separately. But a closer look unveils
important similarities: both tasks target categories that can only be
discriminated by specific object details; and the relevant models should
generalize to new categories, not seen during training.
We propose a novel unified Query-Guided Network (QGN) applicable to both
tasks. QGN consists of a Query-guided Siamese-Squeeze-and-Excitation subnetwork
which re-weights both the query and gallery features across all network layers,
a Query-guided Region Proposal subnetwork for query-specific localisation, and
a Query-guided Similarity subnetwork for metric learning.
QGN improves on a few recent few-shot fine-grained datasets, outperforming
other techniques on CUB by a large margin. QGN also performs competitively on
the person search CUHK-SYSU and PRW datasets, where we perform in-depth
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tasks and literature has treated them separately. But a closer look unveils
important similarities: both tasks target categories that can only be
discriminated by specific object details; and the relevant models should
generalize to new categories, not seen during training.
We propose a novel unified Query-Guided Network (QGN) applicable to both
tasks. QGN consists of a Query-guided Siamese-Squeeze-and-Excitation subnetwork
which re-weights both the query and gallery features across all network layers,
a Query-guided Region Proposal subnetwork for query-specific localisation, and
a Query-guided Similarity subnetwork for metric learning.
QGN improves on a few recent few-shot fine-grained datasets, outperforming
other techniques on CUB by a large margin. QGN also performs competitively on
the person search CUHK-SYSU and PRW datasets, where we perform in-depth
analysis.</abstract><doi>10.48550/arxiv.2209.10250</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Computer Vision and Pattern Recognition |
title | Query-Guided Networks for Few-shot Fine-grained Classification and Person Search |
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