TY - GEN
T1 - Saliency-driven dynamic configuration of HMAX for energy-efficient multi-object recognition
AU - Park, Sungho
AU - Al Maashri, Ahmed
AU - Xiao, Yang
AU - Irick, Kevin M.
AU - Narayanan, Vijaykrishnan
PY - 2013
Y1 - 2013
N2 - Object recognition is one of the most important tasks in computer vision due to its wide variety of applications from small hand-held devices to surveillance systems in large public facilities. Even though biologically inspired approaches have been recently revealed to take another significant step forward to reduce its large power consumption, it still consumes relatively large amounts of energy because of the immense amount of data and computations. Typically in such biologically inspired - often called neuromorphic - object recognition implementations, visual saliency feeds feature extraction to limit the amount of computations effectively by picking a pre-determined size of patches around salient locations of an image. In this work, we explore the design space of HMAX for neuromorphic feature-extraction and classification along with the trade-off between energy consumption and classification accuracy. In addition, a novel method to further reduce energy consumption is proposed by leveraging effort-level of HMAX according to the findings of visual saliency in an efficient manner. Experiments revealed that our dynamic configuration achieved 70.57% of energy reduction with only 1.05% of accuracy loss for accuracy-critical applications. For energy-critical applications, a proposed configurations trades off 5.07% accuracy to gain 91.72% reduction in energy consumption.
AB - Object recognition is one of the most important tasks in computer vision due to its wide variety of applications from small hand-held devices to surveillance systems in large public facilities. Even though biologically inspired approaches have been recently revealed to take another significant step forward to reduce its large power consumption, it still consumes relatively large amounts of energy because of the immense amount of data and computations. Typically in such biologically inspired - often called neuromorphic - object recognition implementations, visual saliency feeds feature extraction to limit the amount of computations effectively by picking a pre-determined size of patches around salient locations of an image. In this work, we explore the design space of HMAX for neuromorphic feature-extraction and classification along with the trade-off between energy consumption and classification accuracy. In addition, a novel method to further reduce energy consumption is proposed by leveraging effort-level of HMAX according to the findings of visual saliency in an efficient manner. Experiments revealed that our dynamic configuration achieved 70.57% of energy reduction with only 1.05% of accuracy loss for accuracy-critical applications. For energy-critical applications, a proposed configurations trades off 5.07% accuracy to gain 91.72% reduction in energy consumption.
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U2 - 10.1109/ISVLSI.2013.6654636
DO - 10.1109/ISVLSI.2013.6654636
M3 - Conference contribution
AN - SCOPUS:84893614445
SN - 9781479913312
T3 - Proceedings of IEEE Computer Society Annual Symposium on VLSI, ISVLSI
SP - 139
EP - 144
BT - Proceedings - 2013 IEEE Computer Society Annual Symposium on VLSI, ISVLSI 2013
PB - IEEE Computer Society
T2 - 2013 IEEE Computer Society Annual Symposium on VLSI, ISVLSI 2013
Y2 - 5 August 2013 through 7 August 2013
ER -