CVDec 3, 2018

Crowd Sourcing based Active Learning Approach for Parking Sign Recognition

arXiv:1812.01081v1
Originality Synthesis-oriented
AI Analysis

This is an incremental approach for solving parking sign recognition in real-world applications.

The paper tackles parking sign recognition by combining active learning with transfer learning and crowd-sourcing to build an accurate model efficiently, addressing challenges like uneven data with variations in shape, color, orientation, and background.

Deep learning models have been used extensively to solve real-world problems in recent years. The performance of such models relies heavily on large amounts of labeled data for training. While the advances of data collection technology have enabled the acquisition of a massive volume of data, labeling the data remains an expensive and time-consuming task. Active learning techniques are being progressively adopted to accelerate the development of machine learning solutions by allowing the model to query the data they learn from. In this paper, we introduce a real-world problem, the recognition of parking signs, and present a framework that combines active learning techniques with a transfer learning approach and crowd-sourcing tools to create and train a machine learning solution to the problem. We discuss how such a framework contributes to building an accurate model in a cost-effective and fast way to solve the parking sign recognition problem in spite of the unevenness of the data associated with the fact that street-level images (such as parking signs) vary in shape, color, orientation and scale, and often appear on top of different types of background.

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