Arbitrary-Shaped Text Detection withAdaptive Text Region Representation
摘要
Text detection/localization, as an important task in computer vision, has
witnessed substantialadvancements in methodology and performance with convolutional
neural networks. However, the vastmajority of popular methods use rectangles or
quadrangles to describe text regions. These representationshave inherent drawbacks,
especially relating to dense adjacent text and loose regional text boundaries,which
usually cause difficulty detecting arbitrarily shaped text. In this paper, we propose
a novel text regionrepresentation method, with a robust pipeline, which can precisely
detect dense adjacent text instances witharbitrary shapes. We consider a text instance
to be composed of an adaptive central text region mask anda corresponding expanding
ratio between the central text region and the full text region. More specifically,our
pipeline generates adaptive central text regions and corresponding expanding ratios
with a proposedtraining strategy, followed by a new proposed post-processing algorithm
which expands central text regionsto the complete text instance with the corresponding
expanding ratios. We demonstrated that our new textregion representation is effective,
and that the pipeline can precisely detect closely adjacent text instances ofarbitrary
shapes. Experimental results on common datasets demonstrate superior performance
类型
出版物
IEEE Access