Object Counting On Fsc147

评估指标

MAE(test)
MAE(val)
RMSE(test)
RMSE(val)

评测结果

各个模型在此基准测试上的表现结果

模型名称
MAE(test)
MAE(val)
RMSE(test)
RMSE(val)
Paper TitleRepository
GeCo7.919.5254.2843.00A Novel Unified Architecture for Low-Shot Counting by Detection and Segmentation-
RCC17.1217.49104.5358.81Learning to Count Anything: Reference-less Class-agnostic Counting with Weak Supervision-
SAFECount14.3215.2885.5447.20Few-shot Object Counting with Similarity-Aware Feature Enhancement-
Counting-DETR16.79-123.56-Few-shot Object Counting and Detection-
GCA-SUN14.0016.0692.1953.04GCA-SUNet: A Gated Context-Aware Swin-UNet for Exemplar-Free Counting-
CounTR11.9513.1391.2349.83CounTR: Transformer-based Generalised Visual Counting-
SemAug-SAFECount12.7412.5989.9044.95Semantic Generative Augmentations for Few-Shot Counting-
DAVE8.668.9132.3628.08DAVE -- A Detect-and-Verify Paradigm for Low-Shot Counting-
Omnicount (Open vocabulary, multi-label, without training)18.63-112-OmniCount: Multi-label Object Counting with Semantic-Geometric Priors-
FamNet22.0823.7599.5469.07Learning To Count Everything-
CACViT9.1310.6348.9637.95Vision Transformer Off-the-Shelf: A Surprising Baseline for Few-Shot Class-Agnostic Counting-
SemAug-CounTR11.3212.3177.5041.65Semantic Generative Augmentations for Few-Shot Counting-
CountGD5.747.124.0926.08CountGD: Multi-Modal Open-World Counting-
LaoNet15.7817.1197.1556.81Object Counting: You Only Need to Look at One-
CounTX (uses text descriptions instead of visual exemplars)15.8817.10106.2965.61Open-world Text-specified Object Counting-
SSD9.589.7364.1329.72Learning Spatial Similarity Distribution for Few-shot Object Counting-
SPDCN13.5114.5996.8049.97Scale-Prior Deformable Convolution for Exemplar-Guided Class-Agnostic Counting
LOCA10.7910.2456.9732.56A Low-Shot Object Counting Network With Iterative Prototype Adaptation-
BMNet+14.6215.7491.8358.53Represent, Compare, and Learn: A Similarity-Aware Framework for Class-Agnostic Counting-
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Object Counting On Fsc147 | SOTA | HyperAI超神经