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SOTA
Object Counting
Object Counting On Carpk
Object Counting On Carpk
Metrics
MAE
RMSE
Results
Performance results of various models on this benchmark
Columns
Model Name
MAE
RMSE
Paper Title
YOLO (2016)
156.00
57.55
You Only Look Once: Unified, Real-Time Object Detection
YOLO9000opt (2017)
130.40
172.46
YOLO9000: Better, Faster, Stronger
Faster R-CNN (2015)
39.88
47.67
Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks
RetinaNet (2018)
24.58
-
Focal Loss for Dense Object Detection
LPN Counting (2017)
22.76
34.46
Drone-based Object Counting by Spatially Regularized Regional Proposal Network
One-Look Regression (2016)
21.88
36.73
A Large Contextual Dataset for Classification, Detection and Counting of Cars with Deep Learning
RetinaNet (2018)
16.62
22.30
Drone-based Object Counting by Spatially Regularized Regional Proposal Network
CounTX (uses arbitrary text input to specify object to count, used "the cars" for CARPK)
8.13
10.87
Open-world Text-specified Object Counting
Soft-IoU + EM-Merger unit
6.77
8.52
Precise Detection in Densely Packed Scenes
VLCounter
6.46
8.68
VLCounter: Text-aware Visual Representation for Zero-Shot Object Counting
BMNet+
5.76
7.83
Represent, Compare, and Learn: A Similarity-Aware Framework for Class-Agnostic Counting
CounTR
5.75
7.45
CounTR: Transformer-based Generalised Visual Counting
SAFECount
5.33
7.04
Few-shot Object Counting with Similarity-Aware Feature Enhancement
HLCNN
2.12
3.02
An Accurate Car Counting in Aerial Images Based on Convolutional Neural Networks
0 of 14 row(s) selected.
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Console
Docs
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LLM Models
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Terms of Service
Privacy Policy
English
HyperAI
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Toggle Sidebar
Search the site…
⌘
K
Command Palette
Search for a command to run...
Console
Home
SOTA
Object Counting
Object Counting On Carpk
Object Counting On Carpk
Metrics
MAE
RMSE
Results
Performance results of various models on this benchmark
Columns
Model Name
MAE
RMSE
Paper Title
YOLO (2016)
156.00
57.55
You Only Look Once: Unified, Real-Time Object Detection
YOLO9000opt (2017)
130.40
172.46
YOLO9000: Better, Faster, Stronger
Faster R-CNN (2015)
39.88
47.67
Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks
RetinaNet (2018)
24.58
-
Focal Loss for Dense Object Detection
LPN Counting (2017)
22.76
34.46
Drone-based Object Counting by Spatially Regularized Regional Proposal Network
One-Look Regression (2016)
21.88
36.73
A Large Contextual Dataset for Classification, Detection and Counting of Cars with Deep Learning
RetinaNet (2018)
16.62
22.30
Drone-based Object Counting by Spatially Regularized Regional Proposal Network
CounTX (uses arbitrary text input to specify object to count, used "the cars" for CARPK)
8.13
10.87
Open-world Text-specified Object Counting
Soft-IoU + EM-Merger unit
6.77
8.52
Precise Detection in Densely Packed Scenes
VLCounter
6.46
8.68
VLCounter: Text-aware Visual Representation for Zero-Shot Object Counting
BMNet+
5.76
7.83
Represent, Compare, and Learn: A Similarity-Aware Framework for Class-Agnostic Counting
CounTR
5.75
7.45
CounTR: Transformer-based Generalised Visual Counting
SAFECount
5.33
7.04
Few-shot Object Counting with Similarity-Aware Feature Enhancement
HLCNN
2.12
3.02
An Accurate Car Counting in Aerial Images Based on Convolutional Neural Networks
0 of 14 row(s) selected.
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Object Counting On Carpk | SOTA | HyperAI