Crowd Counting On Shanghaitech A

评估指标

MAE

评测结果

各个模型在此基准测试上的表现结果

Paper TitleRepository
Zhang et al.181.8Cross-Scene Crowd Counting via Deep Convolutional Neural Networks-
MCNN110.2Single-Image Crowd Counting via Multi-Column Convolutional Neural Network-
Cascaded-MTL101.3CNN-based Cascaded Multi-task Learning of High-level Prior and Density Estimation for Crowd Counting
Switch-CNN90.4Switching Convolutional Neural Network for Crowd Counting
ACSCP75.7Crowd Counting via Adversarial Cross-Scale Consistency Pursuit-
SAFECount73.70Few-shot Object Counting with Similarity-Aware Feature Enhancement
CP-CNN73.6Generating High-Quality Crowd Density Maps using Contextual Pyramid CNNs-
Liu et al.73.6Leveraging Unlabeled Data for Crowd Counting by Learning to Rank
D-ConvNet73.5Crowd Counting With Deep Negative Correlation Learning-
IG-CNN72.5Divide and Grow: Capturing Huge Diversity in Crowd Images with Incrementally Growing CNN-
ic-CNN68.5Iterative Crowd Counting-
CSRNet68.2CSRNet: Dilated Convolutional Neural Networks for Understanding the Highly Congested Scenes
SANet67.0Scale Aggregation Network for Accurate and Efficient Crowd Counting-
LSC-CNN66.4Locate, Size and Count: Accurately Resolving People in Dense Crowds via Detection
CSRNet-EBC66.3CLIP-EBC: CLIP Can Count Accurately through Enhanced Blockwise Classification
OrdinalEntropy65.6Improving Deep Regression with Ordinal Entropy
CAN62.3Context-Aware Crowd Counting
DMCount-EBC62.3CLIP-EBC: CLIP Can Count Accurately through Enhanced Blockwise Classification
FusionCount62.2FusionCount: Efficient Crowd Counting via Multiscale Feature Fusion
DM-Count59.7Distribution Matching for Crowd Counting
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