聚合模式取樣 的英文怎麼說

中文拼音 [shìyàng]
聚合模式取樣 英文
cluster pattern sample
  • : 動詞(聚集; 聚積) assemble; gather; get together
  • : 合量詞(容量單位) ge, a unit of dry measure for grain (=1 decilitre)
  • : 模名詞1. (模子) mould; pattern; matrix 2. (姓氏) a surname
  • : 名詞1 (樣式) type; style 2 (格式) pattern; form 3 (儀式; 典禮) ceremony; ritual 4 (自然科...
  • : Ⅰ動詞1 (拿到身邊) take; get; fetch 2 (得到; 招致) aim at; seek 3 (採取; 選取) adopt; assume...
  • : Ⅰ名詞1. (形狀) appearance; shape 2. (樣品) sample; model; pattern Ⅱ量詞(表示事物的種類) kind; type
  • 聚合 : 1 (聚集到一起) get together2 [化學] (單體結合成高分子化合物) polymerization; polymerize 3 [生...
  • 模式 : model; mode; pattern; type; schema
  1. Firstly the patterns of the multifingered hands are detailed, eight patterns are defined. the classical bayes method is used in the classification of pre - grasp of multiple fingers based on three patterns which are grasping, holding and pinching. based on the eight pre - grasp patterns, bp neural network is applied in the classification of the pre - grasp of multifingered hands and gets a good effect. the method solves the shortcoming input sample relying on the propobility density and simplified the un - insititution characters extraction. in this paper, support vector machine ( svm ) and binary - tree with clustering is applied in the classification. this method can solve the slow speed and effect with fewness sample in the classification, achieving a good effect. in this papper, we extract the characters of the regulation object with geometry characters and extact the unregulation object with the image analysis

    此法解決了輸入本依賴物體的概率密度的特點,簡化了分類特徵提的不直觀性。本文還採用了支持向量機( svm )和類二叉樹相結的方法對機器人手預抓八類進行分類,解決了預抓分類訓練速度過慢以及在分類中本數量偏少而影響分類效果的問題,得到了較高的正確率。本文對預抓幾何形狀規則的物體採用直接提其幾何特徵,對于預抓幾何形狀不規則的物體採用圖像分析的方法進行特徵提
  2. In this text, we first do some research on the genetic algorithm about clustering, discuss about the way of coding and the construction of fitness function, analyze the influence that different genetic manipulation do to the effect of cluster algorithm. then analyze and research on the way that select the initial value in the k - means algorithm, we propose a mix clustering algorithm to improve the k - means algorithm by using genetic algorithm. first we use k - learning genetic algorithm to identify the number of the clusters, then use the clustering result of the genetic clustering algorithm as the initial cluster center of k - means clustering. these two steps are finished based on small database which equably sampling from the whole database, now we have known the number of the clusters and initial cluster center, finally we use k - means algorithm to finish the clustering on the whole database. because genetic algorithm search for the best solution by simulating the process of evolution, the most distinct trait of the algorithm is connotative parallelism and the ability to take advantage of the global information, so the algorithm take on strong steadiness, avoid getting into the local

    本文首先對類分析的遺傳演算法進行了研究,討論了類問題的編碼方和適應度函數的構造方案與計算方法,分析了不同遺傳操作對類演算法的性能和類效果的影響意義。然後對k - means演算法中初值的選方法進行了分析和研究,提出了一種基於遺傳演算法的k - means類改進(混類演算法) ,在基於均勻采的小本集上用k值學習遺傳演算法確定類數k ,用遺傳類演算法的類結果作為k - means類的初始類中心,最後在已知初始類數和初始類中心的情況下用k - means演算法對完整數據集進行類。由於遺傳演算法是一種通過擬自然進化過程搜索最優解的方法,其顯著特點是隱含并行性和對全局信息的有效利用的能力,所以新的改進演算法具有較強的穩健性,可避免陷入局部最優,大大提高類效果。
  3. Cluster pattern sample

    聚合模式取樣
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