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Compare with other methods in the zero-shot scenario.

Compare with other methods in the zero-shot scenario.

<p>Compare with other methods in the zero-shot scenario.</p>

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Bibliographic Details
Main Author: Qinghua Yang (606019) (author)
Other Authors: Bin Liu (5899) (author), Yan Tian (298301) (author), Yangming Shi (21499520) (author), Xinxin Du (470642) (author), Fangyuan He (6455462) (author), Jikun Guo (21499523) (author)
Published: 2025
Subjects:
Sociology
Space Science
Biological Sciences not elsewhere classified
Information Systems not elsewhere classified
similar objects within
shanghaitech datasets demonstrate
scale fusion modules
reducing training costs
optimize computational efficiency
many practical applications
learnable shape embedding
equally critical factor
enhance feature representation
encoder applies self
relatively little attention
integrate adjacent features
agnostic counting framework
model &# 8217
general ai model
shot object counting
scale hybrid encoder
shot learning techniques
hybrid encoder
level features
attention exclusively
agnostic low
shot ).
xlink ">
rapid adaptation
level characteristics
generalizability compared
extensive experiments
existing methods
enhancing performance
efficient low
challenging problem
annotated samples
annotated data
achieves real
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