Multi-strategy dung beetle optimization for robust indoor object detection and tracking for visually impaired people with hybrid deep learning networks Nature
TSLNet: a hierarchical multi-head attention-enabled two-stream LSTM network for accurate pedestrian tracking and behavior recognition Frontiers
Anchor-free deep convolutional neural network for tracking and counting cotton seedlings and flowers ScienceDirect.com
Convolutional transform learning based fusion framework for scale invariant long term target detection and tracking in unmanned aerial vehicles Nature
Vision‐Based UAV Detection and Tracking Using Deep Learning and Kalman Filter Wiley Online Library
Downbeat Tracking with Tempo-Invariant Convolutional Neural Networks Apple Machine Learning Research
Cell segmentation and tracking using CNN-based distance predictions and a graph-based matching strategy PLOS
Tracking rapid permafrost thaw through time: exploring the potential of convolutional neural network based models Stockholm Environment Institute
Comparing Object Recognition in Humans and Deep Convolutional Neural Networks—An Eye Tracking Study Frontiers
: inductive message passing network for efficient human-in-the-loop annotation of mobile eye tracking data Nature
A new framework for mental illnesses diagnosis using wearable devices aided by improved convolutional neural network Nature
Convolutional Neural Network-Based Technique for Gaze Estimation on Mobile Devices Frontiers
Using convolutional neural networks to detect GNSS multipath Frontiers
Multi-target detection and tracking based on CRF network and spatio-temporal attention for sports videos Nature
Guiding visual attention in deep convolutional neural networks based on human eye movements Frontiers
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