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(x,y)=(S*x¡ä,S*y¡ä)

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Fig.3 Improved YOLOv3 structure

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Fig.4 Improved scale 2 prediction structure

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Table 1 Experimental environment configuration

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Fig.5 Comparison of the loss decline curve

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Table 2 Comparison of the measure results

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Fig.6 Comparison of some test results

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Table 3 Further experiments and results

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