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Utilizando o presente trabalho como base, é possível explorar alguns tópicos em trabalhos posteriores, sendo eles:

• Geração de faces 2D com base nas características dos grupos formados;

• Aplicação do método em outros elementos faciais, tais como: nariz e boca;

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Nessa seção são apresentadas as figuras separadas pelo primeiro nó a partir do nó raiz, do mapa mental apresentado na figura 10.

Figura 23: Agrupamento: features, local. Fonte: Autoria própria.

Figura 24: Agrupamento: intelligent, system. Fonte: Autoria própria.

Figura 25: Agrupamento: registration, surface. Fonte: Autoria própria.

Figura 26: Agrupamento: face, facial. Fonte: Autoria própria.

Figura 27: Agrupamento: cell, driver, phone. Fonte: Autoria própria.

Figura 28: Agrupamento: body, burn. Fonte: Autoria própria.

Figura 29: Agrupamento: facial, patients. Fonte: Autoria própria.

Figura 30: Agrupamento: face, features. Fonte: Autoria própria.

Figura 31: Agrupamento: face, recognition. Fonte: Autoria própria.

Figura 32: Agrupamento: boundary, detection. Fonte: Autoria própria.

Figura 33: Agrupamento: hemangiomas, lesions. Fonte: Autoria própria.

Figura 34: Agrupamento: facial, modern. Fonte: Autoria própria.

Figura 35: Agrupamento: angular, artery. Fonte: Autoria própria.

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