Realistic Handwritten Multi-Digit Writer (MDW) Number Recognition Challenges
By: Kiri L. Wagstaff
Potential Business Impact:
Helps computers read whole numbers, not just single digits.
Isolated digit classification has served as a motivating problem for decades of machine learning research. In real settings, numbers often occur as multiple digits, all written by the same person. Examples include ZIP Codes, handwritten check amounts, and appointment times. In this work, we leverage knowledge about the writers of NIST digit images to create more realistic benchmark multi-digit writer (MDW) data sets. As expected, we find that classifiers may perform well on isolated digits yet do poorly on multi-digit number recognition. If we want to solve real number recognition problems, additional advances are needed. The MDW benchmarks come with task-specific performance metrics that go beyond typical error calculations to more closely align with real-world impact. They also create opportunities to develop methods that can leverage task-specific knowledge to improve performance well beyond that of individual digit classification methods.
Similar Papers
Use of Metric Learning for the Recognition of Handwritten Digits, and its Application to Increase the Outreach of Voice-based Communication Platforms
Artificial Intelligence
Reads handwritten forms to help health projects.
Handwritten Digit Recognition: An Ensemble-Based Approach for Superior Performance
CV and Pattern Recognition
Helps computers read messy handwriting perfectly.
Neural Network-Powered Finger-Drawn Biometric Authentication
Machine Learning (CS)
Unlocks phones by tracing numbers with your finger.