O'Keeffe, Simon and Villing, Rudi (2017) A Benchmark Data Set and Evaluation of Deep Learning Architectures for Ball Detection in the RoboCup SPL. In: RoboCup 2017: Robot World Cup XXI, Lecture Notes in Artificial Intelligence.
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Abstract
This paper
presents a benchmark data set for evaluating ball detection
algorithms in the RoboCup Soccer Standard Platform League. We cr
eated
a
la-
belled data set of images with and without ball derived from vision log files rec-
orded
by multiple NAO
robots in various lighting conditions.
The data set con-
tains
5209
labelled
ball image
regions
and 10924 non
-
ball
regions
. Non
-
ball im-
age
region
s
all
contain features that had been classified as a potential ball candi-
date by an existing ball detector. The data set was used to train and evaluate
25
2
different
Deep
Convolutional Neural Network
(CNN)
architectures
for ball de-
tection.
In order to
control computational requirements
,
this evaluation focused
on networks with 2
–
5 layers that could feasibly run in the vision and cognition
cycle of a NAO robot using two cameras at full frame rate (2×30 Hz).
The results
show
that the
classification
perfo
rmance of the networks is quite insensitive to
the details of the network design including input image size, number of layers
and number of outputs at each layer
. In an effort to reduce the computational
requirements of CNNs
we evaluated
XNOR
-
Net
architect
ure
s
which
quantize
the
weigh
ts and ac
tivations of a neural network
to binary values
.
We examined
XNOR
-
Nets
corresponding to the real
-
valued CNNs we had already tested in or-
der to quantify the effect on classification metrics.
The
results
indicate that bal
l
classification
performance
degrad
es
by
12% on average
when changing from
real
-
valued CNN to corresponding XNOR
-
Net
.
Item Type: | Conference or Workshop Item (Paper) |
---|---|
Keywords: | Convolution Neural Network; Deep Learning; Ball Detection; XNOR; Net; |
Academic Unit: | Faculty of Science and Engineering > Electronic Engineering |
Item ID: | 9224 |
Depositing User: | Rudi Villing |
Date Deposited: | 06 Feb 2018 09:45 |
Refereed: | No |
URI: | https://mu.eprints-hosting.org/id/eprint/9224 |
Use Licence: | This item is available under a Creative Commons Attribution Non Commercial Share Alike Licence (CC BY-NC-SA). Details of this licence are available here |
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