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arxiv: 1602.04489 · v1 · pith:SJ7HWDK5new · submitted 2016-02-14 · 💻 cs.CV · cs.LG

Convolutional Tables Ensemble: classification in microseconds

classification 💻 cs.CV cs.LG
keywords architectureclassificationconvolutionalaccuracyconstraintsensemblemicrosecondsobject
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We study classifiers operating under severe classification time constraints, corresponding to 1-1000 CPU microseconds, using Convolutional Tables Ensemble (CTE), an inherently fast architecture for object category recognition. The architecture is based on convolutionally-applied sparse feature extraction, using trees or ferns, and a linear voting layer. Several structure and optimization variants are considered, including novel decision functions, tree learning algorithm, and distillation from CNN to CTE architecture. Accuracy improvements of 24-45% over related art of similar speed are demonstrated on standard object recognition benchmarks. Using Pareto speed-accuracy curves, we show that CTE can provide better accuracy than Convolutional Neural Networks (CNN) for a certain range of classification time constraints, or alternatively provide similar error rates with 5-200X speedup.

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