Defect sample generation
Data cleaning, important sample mining, and small sample learning techniques
Defect sample generation
Deep data analysis to assist intelligent decision-making
AI intelligent standards based on large models, binarization labeling, clustering labeling, and polygon labeling
Simplified labeling and lower professional requirements for personnel
Intelligent annotation upgrade, linear improvement in human efficiency
Inheritance learning and important sample mining
Noisy learning and super-resolution image block learning
Pre training weights
High degree of collaboration between cloud and end, breaking through the shackles of production lines
Multiple model compression methods
Sedimentation of high-precision algorithm models to achieve generalization and transfer of multi scenario models
TensorRT acceleration, performance improvement 3-5 times
SDK Ultimate Optimization, Flexible and Stable Development