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 16511675 of 1966 papers

TitleStatusHype
DensSiam: End-to-End Densely-Siamese Network with Self-Attention Model for Object TrackingCode0
Multiple Object Tracking in Urban Traffic Scenes with a Multiclass Object Detector0
Pack and Detect: Fast Object Detection in Videos Using Region-of-Interest Packing0
Cross-Modal Ranking with Soft Consistency and Noisy Labels for Robust RGB-T TrackingCode0
Triplet Loss in Siamese Network for Object Tracking0
Multiple Context Features in Siamese Networks for Visual Object TrackingCode0
Multi-object Tracking with Neural Gating Using Bilinear LSTM0
Deep Reinforcement Learning with Iterative Shift for Visual Tracking0
Collaborative Deep Reinforcement Learning for Multi-Object Tracking0
Label and Sample: Efficient Training of Vehicle Object Detector from Sparsely Labeled Data0
Deconvolutional Networks for Point-Cloud Vehicle Detection and Tracking in Driving Scenarios0
Multi-Branch Siamese Networks with Online Selection for Object Tracking0
Estimating Metric Poses of Dynamic Objects Using Monocular Visual-Inertial Fusion0
Distractor-aware Siamese Networks for Visual Object TrackingCode0
Dual approach for object tracking based on optical flow and swarm intelligence0
End-to-end Active Object Tracking and Its Real-world Deployment via Reinforcement Learning0
Tracklet Association Tracker: An End-to-End Learning-based Association Approach for Multi-Object Tracking0
Learning Adaptive Discriminative Correlation Filters via Temporal Consistency Preserving Spatial Feature Selection for Robust Visual TrackingCode0
Learning The Sequential Temporal Information with Recurrent Neural Networks0
Variance Reduction for Reinforcement Learning in Input-Driven Environments0
Subpixel-Precise Tracking of Rigid Objects in Real-time0
Combining Background Subtraction Algorithms with Convolutional Neural Network0
A Region-based Gauss-Newton Approach to Real-Time Monocular Multiple Object TrackingCode0
Antithetic and Monte Carlo kernel estimators for partial rankings0
Efficient and Consistent Adversarial Bipartite Matching0
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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