HyperAI

Object Counting On Carpk

Metrics

MAE
RMSE

Results

Performance results of various models on this benchmark

Comparison Table
Model NameMAERMSE
you-only-look-once-unified-real-time-object156.0057.55
faster-r-cnn-towards-real-time-object39.8847.67
a-large-contextual-dataset-for-classification21.8836.73
precise-detection-in-densely-packed-scenes6.778.52
drone-based-object-counting-by-spatially22.7634.46
an-accurate-car-counting-in-aerial-images2.123.02
vlcounter-text-aware-visual-representation6.468.68
countr-transformer-based-generalised-visual5.757.45
iterative-correlation-based-feature5.337.04
yolo9000-better-faster-stronger130.40172.46
open-world-text-specified-object-counting8.1310.87
drone-based-object-counting-by-spatially16.6222.30
focal-loss-for-dense-object-detection24.58-
represent-compare-and-learn-a-similarity5.767.83