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rpn_test.py
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rpn_test.py
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import argparse
import importlib
import math
import os
import pickle as pkl
from functools import reduce
from queue import Queue
from threading import Thread
from core.detection_module import DetModule
from core.detection_input import Loader
from utils.load_model import load_checkpoint
from utils.patch_config import patch_config_as_nothrow
import mxnet as mx
import numpy as np
def parse_args():
parser = argparse.ArgumentParser(description='Test Detection')
# general
parser.add_argument('--config', help='config file path', type=str)
args = parser.parse_args()
config = importlib.import_module(args.config.replace('.py', '').replace('/', '.'))
return config
if __name__ == "__main__":
os.environ["MXNET_CUDNN_AUTOTUNE_DEFAULT"] = "0"
config = parse_args()
pGen, pKv, pRpn, pRoi, pBbox, pDataset, pModel, pOpt, pTest, \
transform, data_name, label_name, metric_list = config.get_config(is_train=False)
pGen = patch_config_as_nothrow(pGen)
pKv = patch_config_as_nothrow(pKv)
pRpn = patch_config_as_nothrow(pRpn)
pRoi = patch_config_as_nothrow(pRoi)
pBbox = patch_config_as_nothrow(pBbox)
pDataset = patch_config_as_nothrow(pDataset)
pModel = patch_config_as_nothrow(pModel)
pOpt = patch_config_as_nothrow(pOpt)
pTest = patch_config_as_nothrow(pTest)
sym = pModel.rpn_test_symbol
sym.save(pTest.model.prefix + "_rpn_test.json")
image_sets = pDataset.image_set
roidbs_all = [pkl.load(open("data/cache/{}.roidb".format(i), "rb"), encoding="latin1") for i in image_sets]
roidbs_all = reduce(lambda x, y: x + y, roidbs_all)
from pycocotools.coco import COCO
from pycocotools.cocoeval import COCOeval
from utils.roidb_to_coco import roidb_to_coco
if pTest.coco.annotation is not None:
coco = COCO(pTest.coco.annotation)
else:
coco = roidb_to_coco(roidbs_all)
data_queue = Queue(100)
result_queue = Queue()
execs = []
workers = []
coco_result = []
split_size = 1000
for index_split in range(int(math.ceil(len(roidbs_all) / split_size))):
print("evaluating [%d, %d)" % (index_split * split_size, (index_split + 1) * split_size))
roidb = roidbs_all[index_split * split_size:(index_split + 1) * split_size]
roidb = pTest.process_roidb(roidb)
for i, x in enumerate(roidb):
x["rec_id"] = np.array(i, dtype=np.float32)
x["im_id"] = np.array(x["im_id"], dtype=np.float32)
loader = Loader(roidb=roidb,
transform=transform,
data_name=data_name,
label_name=label_name,
batch_size=1,
shuffle=False,
num_worker=4,
num_collector=2,
worker_queue_depth=2,
collector_queue_depth=2)
print("total number of images: {}".format(loader.total_batch))
data_names = [k[0] for k in loader.provide_data]
if index_split == 0:
arg_params, aux_params = load_checkpoint(pTest.model.prefix, pTest.model.epoch)
if pModel.process_weight is not None:
pModel.process_weight(sym, arg_params, aux_params)
# merge batch normalization
from utils.graph_optimize import merge_bn
sym, arg_params, aux_params = merge_bn(sym, arg_params, aux_params)
for i in pKv.gpus:
ctx = mx.gpu(i)
mod = DetModule(sym, data_names=data_names, context=ctx)
mod.bind(data_shapes=loader.provide_data, for_training=False)
mod.set_params(arg_params, aux_params, allow_extra=False)
execs.append(mod)
all_outputs = []
if index_split == 0:
def eval_worker(exe, data_queue, result_queue):
while True:
batch = data_queue.get()
exe.forward(batch, is_train=False)
out = [x.asnumpy() for x in exe.get_outputs()]
result_queue.put(out)
for exe in execs:
workers.append(Thread(target=eval_worker, args=(exe, data_queue, result_queue)))
for w in workers:
w.daemon = True
w.start()
import time
t1_s = time.time()
def data_enqueue(loader, data_queue):
for batch in loader:
data_queue.put(batch)
enqueue_worker = Thread(target=data_enqueue, args=(loader, data_queue))
enqueue_worker.daemon = True
enqueue_worker.start()
for _ in range(loader.total_batch):
r = result_queue.get()
rid, id, info, box, score = r
rid, id, info, box, score = rid.squeeze(), id.squeeze(), info.squeeze(), box.squeeze(), score.squeeze()
# TODO: POTENTIAL BUG, id or rid overflows float32(int23, 16.7M)
id = np.asscalar(id)
rid = np.asscalar(rid)
scale = info[2] # h_raw, w_raw, scale
box = box / scale # scale to original image scale
output_record = dict(
rec_id=rid,
im_id=id,
im_info=info,
bbox_xyxy=box, # ndarray (n, class * 4) or (n, 4)
cls_score=score # ndarray (n, class)
)
all_outputs.append(output_record)
t2_s = time.time()
print("network uses: %.1f" % (t2_s - t1_s))
# let user process all_outputs
if pTest.process_rpn_output is not None:
if callable(pTest.process_rpn_output):
pTest.process_rpn_output = [pTest.process_rpn_output]
for callback in pTest.process_rpn_output:
all_outputs = callback(all_outputs, roidb)
# aggregate results for ensemble and multi-scale test
output_dict = {}
for rec in all_outputs:
im_id = rec["im_id"]
if im_id not in output_dict:
output_dict[im_id] = dict(
bbox_xyxy=[rec["bbox_xyxy"]],
cls_score=[rec["cls_score"]]
)
else:
output_dict[im_id]["bbox_xyxy"].append(rec["bbox_xyxy"])
output_dict[im_id]["cls_score"].append(rec["cls_score"])
for k in output_dict:
if len(output_dict[k]["bbox_xyxy"]) > 1:
output_dict[k]["bbox_xyxy"] = np.concatenate(output_dict[k]["bbox_xyxy"])
else:
output_dict[k]["bbox_xyxy"] = output_dict[k]["bbox_xyxy"][0]
if len(output_dict[k]["cls_score"]) > 1:
output_dict[k]["cls_score"] = np.concatenate(output_dict[k]["cls_score"])
else:
output_dict[k]["cls_score"] = output_dict[k]["cls_score"][0]
t3_s = time.time()
print("aggregate uses: %.1f" % (t3_s - t2_s))
for iid in output_dict:
result = []
det = output_dict[iid]["bbox_xyxy"]
if det.shape[0] == 0:
continue
scores = output_dict[iid]["cls_score"]
xs = det[:, 0]
ys = det[:, 1]
ws = det[:, 2] - xs + 1
hs = det[:, 3] - ys + 1
result += [
{'image_id': int(iid),
'category_id': 1,
'bbox': [float(xs[k]), float(ys[k]), float(ws[k]), float(hs[k])],
'score': float(scores[k])}
for k in range(det.shape[0])
]
result = sorted(result, key=lambda x: x['score'])[-100:]
coco_result += result
t5_s = time.time()
print("convert to coco format uses: %.1f" % (t5_s - t3_s))
import json
json.dump(coco_result,
open("experiments/{}/{}_proposal_result.json".format(pGen.name, pDataset.image_set[0]), "w"),
sort_keys=True, indent=2)
coco_dt = coco.loadRes(coco_result)
coco_eval = COCOeval(coco, coco_dt)
coco_eval.params.iouType = "bbox"
coco_eval.params.maxDets = [1, 10, 100] # [100, 300, 1000]
coco_eval.params.useCats = False
coco_eval.evaluate()
coco_eval.accumulate()
coco_eval.summarize()
t6_s = time.time()
print("coco eval uses: %.1f" % (t6_s - t5_s))