This paper presents an overview on the advances of watershed processing algorithms executed on GPU architecture. The programming
model, memory hierarchy and restrictions are discussed, and its influence on image processing algorithms detailed. The recently
proposed algorithms of watershed transform for GPU computation are examined and briefly described. Its implementations are
analyzed in depth and evaluations are made to compare them both on the GPU, against a CPU version and on two different GPU
cards.