您好,登錄后才能下訂單哦!
滴水算法概述
滴水算法是一種用于分割手寫粘連字符的算法,與以往的直線式地分割不同 ,它模擬水滴的滾動,通過水滴的滾動路徑來分割字符,可以解決直線切割造成的過分分割問題。
引言
之前提過對于有粘連的字符可以使用滴水算法來解決分割,但智商捉急的我實在是領悟不了這個算法的精髓,幸好有小伙伴已經實現相關代碼。
我對上面的代碼進行了一些小修改,同時升級為python3的代碼。
還是以這張圖片為例:
在以前的我們已經知道這種簡單的粘連可以通過控制閾值來實現分割,這里我們使用滴水算法。
首先使用之前文章中介紹的垂直投影或者連通域先進行一次切割處理,得到結果如下:
針對于最后粘連情況來使用滴水算法處理:
from itertools import groupby def binarizing(img,threshold): """傳入image對象進行灰度、二值處理""" img = img.convert("L") # 轉灰度 pixdata = img.load() w, h = img.size # 遍歷所有像素,大于閾值的為黑色 for y in range(h): for x in range(w): if pixdata[x, y] < threshold: pixdata[x, y] = 0 else: pixdata[x, y] = 255 return img def vertical(img): """傳入二值化后的圖片進行垂直投影""" pixdata = img.load() w,h = img.size result = [] for x in range(w): black = 0 for y in range(h): if pixdata[x,y] == 0: black += 1 result.append(black) return result def get_start_x(hist_width): """根據圖片垂直投影的結果來確定起點 hist_width中間值 前后取4個值 再這范圍內取最小值 """ mid = len(hist_width) // 2 # 注意py3 除法和py2不同 temp = hist_width[mid-4:mid+5] return mid - 4 + temp.index(min(temp)) def get_nearby_pix_value(img_pix,x,y,j): """獲取臨近5個點像素數據""" if j == 1: return 0 if img_pix[x-1,y+1] == 0 else 1 elif j ==2: return 0 if img_pix[x,y+1] == 0 else 1 elif j ==3: return 0 if img_pix[x+1,y+1] == 0 else 1 elif j ==4: return 0 if img_pix[x+1,y] == 0 else 1 elif j ==5: return 0 if img_pix[x-1,y] == 0 else 1 else: raise Exception("get_nearby_pix_value error") def get_end_route(img,start_x,height): """獲取滴水路徑""" left_limit = 0 right_limit = img.size[0] - 1 end_route = [] cur_p = (start_x,0) last_p = cur_p end_route.append(cur_p) while cur_p[1] < (height-1): sum_n = 0 max_w = 0 next_x = cur_p[0] next_y = cur_p[1] pix_img = img.load() for i in range(1,6): cur_w = get_nearby_pix_value(pix_img,cur_p[0],cur_p[1],i) * (6-i) sum_n += cur_w if max_w < cur_w: max_w = cur_w if sum_n == 0: # 如果全黑則看慣性 max_w = 4 if sum_n == 15: max_w = 6 if max_w == 1: next_x = cur_p[0] - 1 next_y = cur_p[1] elif max_w == 2: next_x = cur_p[0] + 1 next_y = cur_p[1] elif max_w == 3: next_x = cur_p[0] + 1 next_y = cur_p[1] + 1 elif max_w == 5: next_x = cur_p[0] - 1 next_y = cur_p[1] + 1 elif max_w == 6: next_x = cur_p[0] next_y = cur_p[1] + 1 elif max_w == 4: if next_x > cur_p[0]: # 向右 next_x = cur_p[0] + 1 next_y = cur_p[1] + 1 if next_x < cur_p[0]: next_x = cur_p[0] next_y = cur_p[1] + 1 if sum_n == 0: next_x = cur_p[0] next_y = cur_p[1] + 1 else: raise Exception("get end route error") if last_p[0] == next_x and last_p[1] == next_y: if next_x < cur_p[0]: max_w = 5 next_x = cur_p[0] + 1 next_y = cur_p[1] + 1 else: max_w = 3 next_x = cur_p[0] - 1 next_y = cur_p[1] + 1 last_p = cur_p if next_x > right_limit: next_x = right_limit next_y = cur_p[1] + 1 if next_x < left_limit: next_x = left_limit next_y = cur_p[1] + 1 cur_p = (next_x,next_y) end_route.append(cur_p) return end_route def get_split_seq(projection_x): split_seq = [] start_x = 0 length = 0 for pos_x, val in enumerate(projection_x): if val == 0 and length == 0: continue elif val == 0 and length != 0: split_seq.append([start_x, length]) length = 0 elif val == 1: if length == 0: start_x = pos_x length += 1 else: raise Exception('generating split sequence occurs error') # 循環結束時如果length不為0,說明還有一部分需要append if length != 0: split_seq.append([start_x, length]) return split_seq def do_split(source_image, starts, filter_ends): """ 具體實行切割 : param starts: 每一行的起始點 tuple of list : param ends: 每一行的終止點 """ left = starts[0][0] top = starts[0][1] right = filter_ends[0][0] bottom = filter_ends[0][1] pixdata = source_image.load() for i in range(len(starts)): left = min(starts[i][0], left) top = min(starts[i][1], top) right = max(filter_ends[i][0], right) bottom = max(filter_ends[i][1], bottom) width = right - left + 1 height = bottom - top + 1 image = Image.new('RGB', (width, height), (255,255,255)) for i in range(height): start = starts[i] end = filter_ends[i] for x in range(start[0], end[0]+1): if pixdata[x,start[1]] == 0: image.putpixel((x - left, start[1] - top), (0,0,0)) return image def drop_fall(img): """滴水分割""" width,height = img.size # 1 二值化 b_img = binarizing(img,200) # 2 垂直投影 hist_width = vertical(b_img) # 3 獲取起點 start_x = get_start_x(hist_width) # 4 開始滴水算法 start_route = [] for y in range(height): start_route.append((0,y)) end_route = get_end_route(img,start_x,height) filter_end_route = [max(list(k)) for _,k in groupby(end_route,lambda x:x[1])] # 注意這里groupby img1 = do_split(img,start_route,filter_end_route) img1.save('cuts-d-1.png') start_route = list(map(lambda x : (x[0]+1,x[1]),filter_end_route)) # python3中map不返回list需要自己轉換 end_route = [] for y in range(height): end_route.append((width-1,y)) img2 = do_split(img,start_route,end_route) img2.save('cuts-d-2.png') if __name__ == '__main__': p = Image.open("cuts-2.png") drop_fall(p)
執行后會得到切分后的2個照片:
從這張圖片來看,雖然切分成功但是效果比較一般。另外目前的代碼只能對2個字符粘連的情況切分,參悟了滴水算法精髓的小伙伴可以試著改成多個字符粘連的情況。
總結
以上就是這篇文章的全部內容了,希望本文的內容對大家的學習或者工作具有一定的參考學習價值,如果有疑問大家可以留言交流,謝謝大家對億速云的支持。
免責聲明:本站發布的內容(圖片、視頻和文字)以原創、轉載和分享為主,文章觀點不代表本網站立場,如果涉及侵權請聯系站長郵箱:is@yisu.com進行舉報,并提供相關證據,一經查實,將立刻刪除涉嫌侵權內容。