SOTAVerified

Object Recognition

Object recognition is a computer vision technique for detecting + classifying objects in images or videos. Since this is a combined task of object detection plus image classification, the state-of-the-art tables are recorded for each component task here and here.

( Image credit: Tensorflow Object Detection API )

Papers

Showing 17261750 of 2042 papers

TitleStatusHype
Weakly Supervised Localization using Deep Feature Maps0
Seq-NMS for Video Object DetectionCode0
The ImageNet Shuffle: Reorganized Pre-training for Video Event Detection0
An Approach for Noise Removal on Depth Images0
Convolutional Tables Ensemble: classification in microseconds0
Global Deconvolutional Networks for Semantic Segmentation0
Unsupervised Transductive Domain Adaptation0
The Role of Typicality in Object Classification: Improving The Generalization Capacity of Convolutional Neural Networks0
NeRD: a Neural Response Divergence Approach to Visual Salience Detection0
Unsupervised Regenerative Learning of Hierarchical Features in Spiking Deep Networks for Object Recognition0
What Can I Do Around Here? Deep Functional Scene Understanding for Cognitive Robots0
Towards the Design of an End-to-End Automated System for Image and Video-based Recognition0
COCO-Text: Dataset and Benchmark for Text Detection and Recognition in Natural ImagesCode0
The Image Torque Operator for Contour Processing0
Face-space Action Recognition by Face-Object Interactions0
Deep Neural Networks predict Hierarchical Spatio-temporal Cortical Dynamics of Human Visual Object Recognition0
Kernel principal component analysis network for image classification0
Poseidon: A System Architecture for Efficient GPU-based Deep Learning on Multiple Machines0
Deep Active Object Recognition by Joint Label and Action Prediction0
Origami: A 803 GOp/s/W Convolutional Network Accelerator0
Fine-grained Image Classification by Exploring Bipartite-Graph Labels0
What can we learn about CNNs from a large scale controlled object dataset?0
Learning to Combine Mid-Level Cues for Object Proposal Generation0
SALICON: Reducing the Semantic Gap in Saliency Prediction by Adapting Deep Neural Networks0
Infinite Feature SelectionCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Imagenshape bias98.7Unverified
2Stable Diffusionshape bias92.7Unverified
3Partishape bias91.7Unverified
4ViT-22B-384shape bias86.4Unverified
5ViT-22B-560shape bias83.8Unverified
6CLIP (ViT-B)shape bias79.9Unverified
7ViT-22B-224shape bias78Unverified
8ResNet-50 (L2 eps 5.0 adv trained)shape bias69.5Unverified
9ResNet-50 (with strong augmentations)shape bias62.2Unverified
10SWSL (ResNeXt-101)shape bias49.8Unverified
#ModelMetricClaimedVerifiedStatus
1Spike-VGG11Accuracy (% )85.55Unverified
2SSNNAccuracy (% )78.57Unverified
#ModelMetricClaimedVerifiedStatus
1Spike-VGG11Accuracy (% )85.62Unverified
2SSNNAccuracy (% )79.25Unverified
#ModelMetricClaimedVerifiedStatus
1ObjectNet-BaselineTop 5 Accuracy18.75Unverified
2yunTop 5 Accuracy14.75Unverified
#ModelMetricClaimedVerifiedStatus
1ObjectNet-BaselineTop 5 Accuracy52.24Unverified
2DYTop 5 Accuracy0.08Unverified
#ModelMetricClaimedVerifiedStatus
1ObjectNet-BaselineTop 5 Accuracy52.24Unverified
2AJ2021Top 5 Accuracy27.68Unverified
#ModelMetricClaimedVerifiedStatus
1SSNNAccuracy (% )94.91Unverified
#ModelMetricClaimedVerifiedStatus
1Faster-RCNNmAP30.39Unverified
#ModelMetricClaimedVerifiedStatus
1Spike-VGG11Accuracy (% )96Unverified