Continuous Learning of Human Activity Models using Deep Nets
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چکیده
Expt No. Comments 1. Page: 2 Fig. 1 Parameters sensitivity analysis on UCF11 dataset. 2. Page: 3 Fig. 2 Parameters sensitivity analysis on VIRAT dataset. 3. Page: 4 Fig. 3 Advantage of using deep learning. 4. Page: 5 Fig. 4 Evaluation of continuous learning on some individual test instances of KTH dataset. 5. Page: 6 Fig. 5 Evaluation of continuous learning on some individual test instances of UCF11 dataset. 6. Page: 7 Fig. 6 Evaluaiton of continuous learning on some individual test instances of VIRAT dataset. 7. Page: 8 Table II Empirically chosen parameter values
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تاریخ انتشار 2014