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cond3 = np.sum(sam_==idi) |
if ol_rate * cond3 < cond1 and (cond1 > cond2 * ol_rate or cond1 < cond2 * 0.2): |
partid1 = part_dicts[(idx, idf)] |
vertices[partid1].append(partid0) |
vertices[partid0].append(partid1) |
for k,v in vertices.items(): |
vertices[k] = np.unique(v).tolist() # clear all edeges |
visited = {} |
for idx in range(len(vertices)): |
visited[idx] = False |
val_parts = {} |
largest = [0,0] |
find_connected_parts(vertices, visited, val_parts, mask_cents, largest) |
### remove isolated parts with centers that are nearby to its isolated counterparts |
cents = [] |
isolations, iso_cents = [], [] |
if isoproc: |
for k,v in val_parts.items(): |
if len(vertices[v]) > 0: |
cents.append(mask_cents[v][0].reshape(1,-1)) |
else: |
isolations.append(v) |
iso_cents.append(mask_cents[v][0].reshape(1,-1)) |
else: |
for k,v in val_parts.items(): |
cents.append(mask_cents[v][0].reshape(1,-1)) |
# process isolated parts |
if len(iso_cents) > 0: |
val_parts_iso = {} |
count_k = 0 |
for k in isolations: |
val_parts_iso[count_k] = k |
count_k += 1 |
for k,v in val_parts_iso.items(): |
cents.append(mask_cents[v][0].reshape(1,-1)) |
# record the number of non-isolated parts |
solid_cents_num.append(np.max([len(cents) - len(val_parts_iso), 2])) |
else: |
solid_cents_num.append(len(cents)) |
cents = np.concatenate(cents, axis=0) |
cents_lists.append(cents) |
cents_tosave = {} |
count = 0 |
for ol_code in overlap_lists.keys(): |
cent_ = cents_lists[count] |
if cent_.shape[0] < 2 or cent_.shape[0] > parts_upbd or cent_.shape[0] < parts_lobd: |
pass |
elif count > 0: |
cent_1 = cents_lists[count-1] |
if cent_.shape[0]==cent_1.shape[0] and np.sum(np.abs(cent_1-cent_)) < 1e-6: |
pass |
else: |
cents_tosave[ol_code] = cent_ |
cents_tosave[ol_code + '_sol'] = np.array([solid_cents_num[count]]) |
else: |
cents_tosave[ol_code] = cent_ |
cents_tosave[ol_code + '_sol'] = np.array([solid_cents_num[count]]) |
count += 1 |
# in case no result meet the restrictions |
if len(cents_tosave) < 1: |
count = 0 |
for ol_code in overlap_lists.keys(): |
cent_ = cents_lists[count] |
if cent_.shape[0] < 2: |
pass |
elif count > 0: |
cent_1 = cents_lists[count-1] |
if cent_.shape[0]==cent_1.shape[0] and np.sum(np.abs(cent_1-cent_)) < 1e-6: |
pass |
else: |
cents_tosave[ol_code] = cent_ |
cents_tosave[ol_code + '_sol'] = np.array([solid_cents_num[count]]) |
else: |
cents_tosave[ol_code] = cent_ |
cents_tosave[ol_code + '_sol'] = np.array([solid_cents_num[count]]) |
count += 1 |
np.savez(os.path.join('output', renderdir, name, 'sam_cents.npz'), **cents_tosave) |
# <FILESEP> |
#!/usr/bin/python |
# -*- coding: utf-8 -*- |
import tensorflow as tf |
class TCNNConfig(object): |
"""CNN配置参数""" |
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