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Human Clustering on Bi-dimensional Data: An Assessment

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Academic year: 2021

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Figure

Figure 1. Clustering features: a) connectedness; b) structuring direction; c) structuring density; d)  structuring morphology
Figure 2: Data sets I.
Figure 3: Data sets II.
Table 1: Experimental results with adults.
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