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Delta-TSR: a description of spatial relationships between objects for image retrieval

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Academic year: 2021

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Figure 1: (a) Variation zone in T SR (b) Triangular relationship of 3 objects O 1 , O 2 , O 3 in ∆-TSR (c) Variation
Figure 2: Illustration of the pruning strategies on a semi-local neighborhood centered on object O 5 and con-
Figure 3: Samples of DB 6000 : two objects with different backgrounds and 3D poses / 2D rotations.
Figure 4: Comparison of the best configuration of approaches (a) on DB 600 and (b) on DB 6000
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