CV
ECCV

Few-shot Object Counting and Detection

September 20, 2022

We tackle a new task of few-shot object counting and detection. Given a few exemplar bounding boxes of a target object class, we seek to count and detect all objects of the target class. This task shares the same supervision as the few-shot object counting but additionally outputs the object bounding boxes along with the total object count. To address this challenging problem, we introduce a novel two-stage training strategy and a novel uncertainty-aware few-shot object detector: Counting-DETR. The former is aimed at generating pseudo ground-truth bounding boxes to train the latter. The latter leverages the pseudo ground-truth provided by the former but takes the necessary steps to account for the imperfection of pseudo ground-truth. To validate the performance of our method on the new task, we introduce two new datasets named FSCD-147 and FSCD-LVIS. Both datasets contain images with complex scenes, multiple object classes per image, and a huge variation in object shapes, sizes, and appearance. Our proposed approach outperforms very strong baselines adapted from few-shot object counting and few-shot object detection with a large margin in both counting and detection metrics. The code and models are available at https://github.com/VinAIResearch/Counting-DETR.

Overall

< 1 minute

Thanh Van Nguyen*; Chau Hai Pham; Khoi Nguyen; Minh Hoai

ECCV 2022

Share Article

Related publications

GenAI
CV
NeurIPS
November 28, 2024

Hao Phung*, Quan Dao*, Trung Dao, Viet Hoang Phan, Dimitris N. Metaxas, Anh Tran

GenAI
CV
ECCV
November 28, 2024

Uy Dieu Tran, Minh Luu, Phong Ha Nguyen, Khoi Nguyen, Binh-Son Hua

GenAI
CV
ECCV
November 28, 2024

Phuong Dam, Jihoon Jeong, Anh Tran, Daeyoung Kim

CV
ECCV
November 28, 2024

Hoang Pham, The-Anh Ta, Anh Tran, Khoa Doan