2 research outputs found
NeRD: Neural field-based Demosaicking
We introduce NeRD, a new demosaicking method for generating full-color images
from Bayer patterns. Our approach leverages advancements in neural fields to
perform demosaicking by representing an image as a coordinate-based neural
network with sine activation functions. The inputs to the network are spatial
coordinates and a low-resolution Bayer pattern, while the outputs are the
corresponding RGB values. An encoder network, which is a blend of ResNet and
U-net, enhances the implicit neural representation of the image to improve its
quality and ensure spatial consistency through prior learning. Our experimental
results demonstrate that NeRD outperforms traditional and state-of-the-art
CNN-based methods and significantly closes the gap to transformer-based
methods.Comment: 5 pages, 4 figures, 1 tabl
Real-Time Wheel Detection and Rim Classification in Automotive Production
This paper proposes a novel approach to real-time automatic rim detection,
classification, and inspection by combining traditional computer vision and
deep learning techniques. At the end of every automotive assembly line, a
quality control process is carried out to identify any potential defects in the
produced cars. Common yet hazardous defects are related, for example, to
incorrectly mounted rims. Routine inspections are mostly conducted by human
workers that are negatively affected by factors such as fatigue or distraction.
We have designed a new prototype to validate whether all four wheels on a
single car match in size and type. Additionally, we present three comprehensive
open-source databases, CWD1500, WHEEL22, and RB600, for wheel, rim, and bolt
detection, as well as rim classification, which are free-to-use for scientific
purposes.Comment: 5 pages, 7 figures, 3 table