RGB-X Classification for Electronics Sorting
- URL: http://arxiv.org/abs/2209.03509v1
- Date: Thu, 8 Sep 2022 00:33:00 GMT
- Title: RGB-X Classification for Electronics Sorting
- Authors: FNU Abhimanyu, Tejas Zodage, Umesh Thillaivasan, Xinyue Lai, Rahul
Chakwate, Javier Santillan, Emma Oti, Ming Zhao, Ralph Boirum, Howie Choset,
Matthew Travers
- Abstract summary: This work introduces RGB-X, a multi-modal image classification approach, that utilizes key features from external RGB images with those generated from X-ray images to accurately classify electronic objects.
We present a novel way of creating a synthetic dataset using domain randomization applied to the X-ray domain.
The combined RGB-X approach gives us an accuracy of 98.6% on 10 generations of modern smartphones, which is greater than their individual accuracies of 89.1% (RGB) and 97.9% (X-ray) independently.
- Score: 10.409080299411645
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Effectively disassembling and recovering materials from waste electrical and
electronic equipment (WEEE) is a critical step in moving global supply chains
from carbon-intensive, mined materials to recycled and renewable ones.
Conventional recycling processes rely on shredding and sorting waste streams,
but for WEEE, which is comprised of numerous dissimilar materials, we explore
targeted disassembly of numerous objects for improved material recovery. Many
WEEE objects share many key features and therefore can look quite similar, but
their material composition and internal component layout can vary, and thus it
is critical to have an accurate classifier for subsequent disassembly steps for
accurate material separation and recovery. This work introduces RGB-X, a
multi-modal image classification approach, that utilizes key features from
external RGB images with those generated from X-ray images to accurately
classify electronic objects. More specifically, this work develops Iterative
Class Activation Mapping (iCAM), a novel network architecture that explicitly
focuses on the finer-details in the multi-modal feature maps that are needed
for accurate electronic object classification. In order to train a classifier,
electronic objects lack large and well annotated X-ray datasets due to expense
and need of expert guidance. To overcome this issue, we present a novel way of
creating a synthetic dataset using domain randomization applied to the X-ray
domain. The combined RGB-X approach gives us an accuracy of 98.6% on 10
generations of modern smartphones, which is greater than their individual
accuracies of 89.1% (RGB) and 97.9% (X-ray) independently. We provide
experimental results3 to corroborate our results.
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