SoftTriple (ICCV2019) in pytorch
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Updated
Oct 11, 2019 - Python
SoftTriple (ICCV2019) in pytorch
ArcFace head module for Automated feature extraction/Deep Metric Learning with Autokeras
Deep metric learning repository
codes for TGRS paper "Deep Metric Learning based on Scalable Neighborhood Components for Remote Sensing Scene Characterization"
Sigmoid triplet hardness sequencing approach over other mining approaches, intended for tackling feature-collapse in triplet loss
A project description of discovering new shop signboards in driving records of delivery box trucks.
Master's Degree Project – M.Sc. in Media Technology and Engineering at Linköping University – Automated Gait Analysis Using Deep Metric Learning
Deep Metric Learning
PyTorch Implementation for Deep Metric Learning Pipelines
A Real Time Image based attendance system that takes time spent loitering around into account, when marking the attendance for each individual.
A novel dynamic learning strategy that overcomes the empirical search of an optimal number of subspace learners in multiple metric learners.
Pytorch Implementation of bmvc 2022 paper "Beyong the CLS Token: Image Reranking using Pretrained Vision Transformers"
Simple face detection and recognition in images and videos, deep metric learning with Dlib's HoG face detection model
Basic reference for Multi View Classification - mvcnn
Classification of Clinically Significant Prostate Cancer with 3D Multiparametric MRI with Deep Metric Learning.
This project Implements the paper “Causal Fair Metric: Bridging Causality, Individual Fairness, and Adversarial Robustness” using the Python language.
a task of learning a distance function over data in extracted feature understanding
Identifying the corresponding CT slices among the past scans of the same patient via deep metric learning
Official implementation of STOS in an original article "High-intensified resemblance & Statistic-Restructured Alignment in Few-Shot DA for Industrial-Specialized Employment"
The PyTorch implementation of Discriminant Distribution-Agnostic loss (DDA loss)
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