The objective of Automatic Pavement Crack Detection is to develop an automated system that can accurately detect cracks in pavement surfaces using computer vision and machine learning techniques. The system can help improve the efficiency and accuracy of pavement inspection and maintenance, as well as reduce the need for manual inspection by human operators.
Payement crack detection and characterization is a fundamental part of road intelligent maintenance systems. Due to the high non-uniformity of cracks, topological complexity, and similar noise from crack texture, the challenge arises in this domain with automated crack detection and classification in a complex environment. In this work, an overarching framework for a universal and robust automatic method that simultaneously characterizes the type of crack and its severity level was developed. For crack detection, we propose a novel and efficient crack detection network that captures the crack context information by establishing a multi scale dilated convolution module. On this foundation, an attention mechanism is introduced to further refine the high-level features. Moreover, the rich features at different levels are fused in an up sampling module to generate more detailed crack detection results. For crack classification, a novel characterization algorithm is developed to classify the type of crack after detection. The crack segment branches are then merged and classified into four types: transversal, longitudinal, block, and alligator; the severity levels of cracks are assessed by calculating the average width and distance between the crack branches.
KEYWORDS: Payement crack detection, crack classification, convolutional neural network.
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SOFTWARE FRONT END REQUIREMENTS
H/W CONFIGURATION:
Processor - I3/Intel Processor
Hard Disk -160GB
Key Board - Standard Windows Keyboard
Mouse - Two or Three Button Mouse
Monitor - SVGA
Ram -8GB
S/W CONFIGURATION:
Operating System : Windows 7/8/10 .
Server side Script: HTML, CSS & JS.
IDE : Pycharm.
Libraries Used: Numpy, IO, OS, Flask, keras.
Technology : Python 3.6+.