2019
DOI: 10.1007/978-3-030-27544-0_15
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Jetson, Where Is the Ball? Using Neural Networks for Ball Detection at RoboCup 2017

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Cited by 9 publications
(5 citation statements)
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“…The RoboCup Soccer League is popular in humanoid research due to the visual identification and localization challenges it presents. [45,46] and [47] are some examples of real-time, CNN based ball detection approaches utilizing RGB cameras developed specifically for RoboCup. Cruz et al [48] could additionally estimate player poses, goal locations and other key pitch features using intensity images alone.…”
Section: Localization Mapping and Slammentioning
confidence: 99%
See 1 more Smart Citation
“…The RoboCup Soccer League is popular in humanoid research due to the visual identification and localization challenges it presents. [45,46] and [47] are some examples of real-time, CNN based ball detection approaches utilizing RGB cameras developed specifically for RoboCup. Cruz et al [48] could additionally estimate player poses, goal locations and other key pitch features using intensity images alone.…”
Section: Localization Mapping and Slammentioning
confidence: 99%
“…Cruz et al [48] could additionally estimate player poses, goal locations and other key pitch features using intensity images alone. Due to the low on-board computational power of the humanoids, others have used fast, low power external mobile GPU boards such as the Nvidia Jetson to aid inference [47,49].…”
Section: Localization Mapping and Slammentioning
confidence: 99%
“…Then, individual results are combined to produce a final ball probability map. (Gabel et al, 2018) uses off-the-shelf deep neural network-based classifier architectures (AlexNet and Inception) fine tuned to detect the ball in rectangular patches cropped from the input image. Authors reported 99% ball detection accuracy on the custom dataset from RoboCup competition.…”
Section: Related Workmentioning
confidence: 99%
“…More importantly, the quality of the object recognition system largely depends on the efficiency of the algorithm used to generate candidates for classification (whether CNNS are used for binary classification tasks [29] or to detect several relevant object categories [30], or to detect robots (humanoids) [29]). Obviously, ball recognition has received the most attention [31]. Ball-only CNNs had input size massively reduced to be ported to typical robots for the humanoid league [32].…”
Section: Human Vision and Computer Visionmentioning
confidence: 99%