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IJCNN
2007
IEEE

Theta Neuron Networks: Robustness to Noise in Embedded Applications

13 years 10 months ago
Theta Neuron Networks: Robustness to Noise in Embedded Applications
- In this paper, we train a one-layer Theta Neuron Network (TNN) to perform a Braitenberg obstacle avoidance algorithm on a Khepera robot. The Theta neuron model is more biologically plausible than the leaky integrate and fire model typically used in Spiking Neural Networks. Our motivation is to determine if the dynamical properties of the theta neuron model can be leveraged to increase the noise robustness in an embedded application. We compare Khepera obstacle avoidance results with traditional Artificial Neural Network and TNN implementations under different levels of sensor noise. As the noise increases, the performance of the TNN is the least affected. At high noise levels, the ANN and Braitenberg implementations calculate the incorrect turn direction 42% more often than the TNN and deviate from a straight path trajectory over 10 times as far. The results demonstrate that TNNs warrants further development for engineering applications.
Sam McKennoch, Preethi Sundaradevan, Linda G. Bush
Added 03 Jun 2010
Updated 03 Jun 2010
Type Conference
Year 2007
Where IJCNN
Authors Sam McKennoch, Preethi Sundaradevan, Linda G. Bushnell
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