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Methods/GPS

GPS

Greedy Policy Search

Computer VisionIntroduced 2000707 papers
Source Paper

Description

Greedy Policy Search (GPS) is a simple algorithm that learns a policy for test-time data augmentation based on the predictive performance on a validation set. GPS starts with an empty policy and builds it in an iterative fashion. Each step selects a sub-policy that provides the largest improvement in calibrated log-likelihood of ensemble predictions and adds it to the current policy.

Papers Using This Method

Geo-Registration of Terrestrial LiDAR Point Clouds with Satellite Images without GNSS2025-07-08Curriculum-Guided Antifragile Reinforcement Learning for Secure UAV Deconfliction under Observation-Space Attacks2025-06-26USVTrack: USV-Based 4D Radar-Camera Tracking Dataset for Autonomous Driving in Inland Waterways2025-06-23TrajSceneLLM: A Multimodal Perspective on Semantic GPS Trajectory Analysis2025-06-19Quantum Artificial Intelligence for Secure Autonomous Vehicle Navigation: An Architectural Proposal2025-06-19Enhancing eLoran Timing Accuracy via Machine Learning with Meteorological and Terrain Data2025-06-18M2BeamLLM: Multimodal Sensing-empowered mmWave Beam Prediction with Large Language Models2025-06-17Towards Perception-based Collision Avoidance for UAVs when Guiding the Visually Impaired2025-06-17A causal evaluation of Bogota's cable car illustrates the transformative potential of mobile phone data for policy analysis2025-06-11Valuing Diffuse Global Public Goods from Satellite Constellations: Evidence from GPS and Airline Delays2025-06-09The NetMob25 Dataset: A High-resolution Multi-layered View of Individual Mobility in Greater Paris Region2025-06-06End-to-End Framework for Robot Lawnmower Coverage Path Planning using Cellular Decomposition2025-06-06Machine learning for in-situ composition mapping in a self-driving magnetron sputtering system2025-06-06Vision-Based Autonomous MM-Wave Reflector Using ArUco-Driven Angle-of-Arrival Estimation2025-06-05Performance of leading large language models in May 2025 in Membership of the Royal College of General Practitioners-style examination questions: a cross-sectional analysis2025-06-03Towards Geometry Problem Solving in the Large Model Era: A Survey2025-06-03A Provable Approach for End-to-End Safe Reinforcement Learning2025-05-28STACI: Spatio-Temporal Aleatoric Conformal Inference2025-05-27GPS-Aided Deep Learning for Beam Prediction and Tracking in UAV mmWave Communication2025-05-23PawPrint: Whose Footprints Are These? Identifying Animal Individuals by Their Footprints2025-05-23