A Hermite polynomial algorithm for detection of lesions in lymphoma images
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Alessandro Santana Martins | Leandro Alves Neves | Marcelo Zanchetta do Nascimento | Thaína A. A. Tosta | Paulo Rogério de Faria | Guilherme Freire Roberto | Leonardo C. Longo | Adriano Barbosa Silva | M. D. do Nascimento | P. D. de Faria | T. A. A. Tosta | L. A. Neves | A. S. Martins | Leonardo C. Longo | Adriano B. Silva | G. F. Roberto | M. Z. do Nascimento
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