SOTAVerified

Object Tracking

Object tracking is the task of taking an initial set of object detections, creating a unique ID for each of the initial detections, and then tracking each of the objects as they move around frames in a video, maintaining the ID assignment. State-of-the-art methods involve fusing data from RGB and event-based cameras to produce more reliable object tracking. CNN-based models using only RGB images as input are also effective. The most popular benchmark is OTB. There are several evaluation metrics specific to object tracking, including HOTA, MOTA, IDF1, and Track-mAP.

( Image credit: Towards-Realtime-MOT )

Papers

Showing 13761400 of 1966 papers

TitleStatusHype
Object Tracking through Residual and Dense LSTMs0
Semi-Supervised Object Detection with Sparsely Annotated Dataset0
Center-based 3D Object Detection and TrackingCode2
Accurate Anchor Free Tracking0
GNN3DMOT: Graph Neural Network for 3D Multi-Object Tracking with Multi-Feature LearningCode1
Benchmarking Unsupervised Object Representations for Video SequencesCode1
Multiple-Vehicle Tracking in the Highway Using Appearance Model and Visual Object Tracking0
Quasi-Dense Similarity Learning for Multiple Object TrackingCode1
Map3D: Registration Based Multi-Object Tracking on 3D Serial Whole Slide ImagesCode0
TubeTK: Adopting Tubes to Track Multi-Object in a One-Step Training ModelCode1
RGB-D-E: Event Camera Calibration for Fast 6-DOF Object TrackingCode1
Metro-haul Project Vertical Service Demo: Video Surveillance Real-time Low-latency Object Tracking0
Multi-Task Reinforcement Learning based Mobile Manipulation Control for Dynamic Object Tracking and Grasping0
Siamese Keypoint Prediction Network for Visual Object TrackingCode1
Simple Unsupervised Multi-Object Tracking0
COMET: Context-Aware IoU-Guided Network for Small Object Tracking0
GNN3DMOT: Graph Neural Network for 3D Multi-Object Tracking With 2D-3D Multi-Feature LearningCode1
Cross-Modal Pattern-Propagation for RGB-T Tracking0
One-Shot Adversarial Attacks on Visual Tracking With Dual Attention0
D3S - A Discriminative Single Shot Segmentation Tracker0
Learning a Neural Solver for Multiple Object TrackingCode1
Computing Representations for Lie Algebraic NetworksCode0
P2B: Point-to-Box Network for 3D Object Tracking in Point CloudsCode1
AFAT: Adaptive Failure-Aware Tracker for Robust Visual Object Tracking0
TAO: A Large-Scale Benchmark for Tracking Any Object0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HR-CEUTrack-LargeSuccess Rate65Unverified
2HR-CEUTrack-BaseSuccess Rate63.2Unverified
3CEUTrack-LargeSuccess Rate62.8Unverified
4CEUTrack-BaseSuccess Rate62Unverified
5SiamR-CNNSuccess Rate60.9Unverified
6TransTSuccess Rate60.5Unverified
7SuperDiMPSuccess Rate60.2Unverified
8TrDiMPSuccess Rate60.1Unverified
9KeepTrackSuccess Rate59.6Unverified
10AiATrackSuccess Rate59Unverified
#ModelMetricClaimedVerifiedStatus
1HR-MonTrack-BaseSuccess Rate68.5Unverified
2HR-MonTrack-TinySuccess Rate66.3Unverified
3Multi-modalSuccess Rate63.4Unverified
4PrDiMPSuccess Rate59Unverified
5DiMPSuccess Rate57.1Unverified
6MonTrackSuccess Rate54.9Unverified
7ATOMSuccess Rate46.5Unverified
8KYSSuccess Rate26.6Unverified
#ModelMetricClaimedVerifiedStatus
1OmniTrackHOTA23.45Unverified
2DeepSORTHOTA21.16Unverified
3OC-SORTHOTA20.83Unverified
4ByteTrackHOTA20.66Unverified
5TrackFormerHOTA19.62Unverified
6HybridSORTHOTA16.64Unverified
7DiffMOTHOTA16.4Unverified
8Bot-SORTHOTA15.77Unverified
#ModelMetricClaimedVerifiedStatus
1DiMP50Success Rate67.33Unverified
2PrDiMP50Success Rate67Unverified
3PrDiMP18Success Rate65.9Unverified
4DiMP18Success Rate64.6Unverified
5AtomSuccess Rate63.8Unverified
#ModelMetricClaimedVerifiedStatus
1finalHumans0.14Unverified
2night_furyHumans0.05Unverified
3Yolo based methodHumans0.02Unverified
4finalHumans0Unverified
#ModelMetricClaimedVerifiedStatus
1M2-Trackmean precision83.4Unverified
2BATmean precision75.2Unverified
#ModelMetricClaimedVerifiedStatus
1UMMT3DMOTA95Unverified
2MMPTRACK3DMOTA94.8Unverified
#ModelMetricClaimedVerifiedStatus
1Siam-FCAverage IOU0.66Unverified
#ModelMetricClaimedVerifiedStatus
1RT-MDNetPrecision Plot0.63Unverified