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tsm_r50.py
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tsm_r50.py
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import argparse
import os
import struct
import numpy as np
import pycuda.autoinit # noqa
import pycuda.driver as cuda
import tensorrt as trt
BATCH_SIZE = 1
NUM_SEGMENTS = 8
INPUT_H = 224
INPUT_W = 224
OUTPUT_SIZE = 400
SHIFT_DIV = 8
assert INPUT_H % 32 == 0 and INPUT_W % 32 == 0, \
"Input height and width should be a multiple of 32."
EPS = 1e-5
INPUT_BLOB_NAME = "data"
OUTPUT_BLOB_NAME = "prob"
TRT_LOGGER = trt.Logger(trt.Logger.INFO)
def load_weights(file):
print(f"Loading weights: {file}")
assert os.path.exists(file), f'Unable to load weight file {file}'
weight_map = {}
with open(file, "r") as f:
lines = [line.strip() for line in f]
count = int(lines[0])
assert count == len(lines) - 1
for i in range(1, count + 1):
splits = lines[i].split(" ")
name = splits[0]
cur_count = int(splits[1])
assert cur_count + 2 == len(splits)
values = []
for j in range(2, len(splits)):
# hex string to bytes to float
values.append(struct.unpack(">f", bytes.fromhex(splits[j])))
weight_map[name] = np.array(values, dtype=np.float32)
return weight_map
def add_shift_module(network, input, input_shape, num_segments=8, shift_div=8):
fold = input_shape[1] // shift_div
# left
left_split = network.add_slice(input,
start=(1, 0, 0, 0),
shape=(num_segments - 1, fold,
input_shape[2], input_shape[3]),
stride=(1, 1, 1, 1))
assert left_split
left_split_shape = (1, fold, input_shape[2], input_shape[3])
left_blank = network.add_constant(shape=left_split_shape,
weights=np.zeros(left_split_shape,
np.float32))
assert left_blank
left = network.add_concatenation(
[left_split.get_output(0),
left_blank.get_output(0)])
assert left
left.axis = 0
# mid
mid_split_shape = (1, fold, input_shape[2], input_shape[3])
mid_blank = network.add_constant(shape=mid_split_shape,
weights=np.zeros(mid_split_shape,
np.float32))
assert mid_blank
mid_split = network.add_slice(input,
start=(0, fold, 0, 0),
shape=(num_segments - 1, fold,
input_shape[2], input_shape[3]),
stride=(1, 1, 1, 1))
assert mid_split
mid = network.add_concatenation(
[mid_blank.get_output(0),
mid_split.get_output(0)])
assert mid
mid.axis = 0
# right
right = network.add_slice(input,
start=(0, 2 * fold, 0, 0),
shape=(num_segments, input_shape[1] - 2 * fold,
input_shape[2], input_shape[3]),
stride=(1, 1, 1, 1))
# concat left mid right
output = network.add_concatenation(
[left.get_output(0),
mid.get_output(0),
right.get_output(0)])
assert output
output.axis = 1
return output
def add_batch_norm_2d(network, weight_map, input, layer_name, eps):
gamma = weight_map[layer_name + ".weight"]
beta = weight_map[layer_name + ".bias"]
mean = weight_map[layer_name + ".running_mean"]
var = weight_map[layer_name + ".running_var"]
var = np.sqrt(var + eps)
scale = gamma / var
shift = -mean / var * gamma + beta
return network.add_scale(input=input,
mode=trt.ScaleMode.CHANNEL,
shift=shift,
scale=scale)
def bottleneck(network, weight_map, input, in_channels, out_channels, stride,
layer_name, input_shape):
shift = add_shift_module(network, input, input_shape, NUM_SEGMENTS,
SHIFT_DIV)
assert shift
conv1 = network.add_convolution(input=shift.get_output(0),
num_output_maps=out_channels,
kernel_shape=(1, 1),
kernel=weight_map[layer_name +
"conv1.weight"],
bias=trt.Weights())
assert conv1
bn1 = add_batch_norm_2d(network, weight_map, conv1.get_output(0),
layer_name + "bn1", EPS)
assert bn1
relu1 = network.add_activation(bn1.get_output(0),
type=trt.ActivationType.RELU)
assert relu1
conv2 = network.add_convolution(input=relu1.get_output(0),
num_output_maps=out_channels,
kernel_shape=(3, 3),
kernel=weight_map[layer_name +
"conv2.weight"],
bias=trt.Weights())
assert conv2
conv2.stride = (stride, stride)
conv2.padding = (1, 1)
bn2 = add_batch_norm_2d(network, weight_map, conv2.get_output(0),
layer_name + "bn2", EPS)
assert bn2
relu2 = network.add_activation(bn2.get_output(0),
type=trt.ActivationType.RELU)
assert relu2
conv3 = network.add_convolution(input=relu2.get_output(0),
num_output_maps=out_channels * 4,
kernel_shape=(1, 1),
kernel=weight_map[layer_name +
"conv3.weight"],
bias=trt.Weights())
assert conv3
bn3 = add_batch_norm_2d(network, weight_map, conv3.get_output(0),
layer_name + "bn3", EPS)
assert bn3
if stride != 1 or in_channels != 4 * out_channels:
conv4 = network.add_convolution(
input=input,
num_output_maps=out_channels * 4,
kernel_shape=(1, 1),
kernel=weight_map[layer_name + "downsample.0.weight"],
bias=trt.Weights())
assert conv4
conv4.stride = (stride, stride)
bn4 = add_batch_norm_2d(network, weight_map, conv4.get_output(0),
layer_name + "downsample.1", EPS)
assert bn4
ew1 = network.add_elementwise(bn4.get_output(0), bn3.get_output(0),
trt.ElementWiseOperation.SUM)
else:
ew1 = network.add_elementwise(input, bn3.get_output(0),
trt.ElementWiseOperation.SUM)
assert ew1
relu3 = network.add_activation(ew1.get_output(0),
type=trt.ActivationType.RELU)
assert relu3
return relu3
def create_engine(maxBatchSize, builder, dt, weights):
weight_map = load_weights(weights)
network = builder.create_network()
data = network.add_input(INPUT_BLOB_NAME, dt,
(NUM_SEGMENTS, 3, INPUT_H, INPUT_W))
assert data
conv1 = network.add_convolution(input=data,
num_output_maps=64,
kernel_shape=(7, 7),
kernel=weight_map["conv1.weight"],
bias=trt.Weights())
assert conv1
conv1.stride = (2, 2)
conv1.padding = (3, 3)
bn1 = add_batch_norm_2d(network, weight_map, conv1.get_output(0), "bn1",
EPS)
assert bn1
relu1 = network.add_activation(bn1.get_output(0),
type=trt.ActivationType.RELU)
assert relu1
pool1 = network.add_pooling(input=relu1.get_output(0),
window_size=trt.DimsHW(3, 3),
type=trt.PoolingType.MAX)
assert pool1
pool1.stride = (2, 2)
pool1.padding = (1, 1)
cur_height = INPUT_H // 4
cur_width = INPUT_W // 4
x = bottleneck(network, weight_map, pool1.get_output(0), 64, 64, 1,
"layer1.0.", (NUM_SEGMENTS, 64, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 256, 64, 1,
"layer1.1.", (NUM_SEGMENTS, 256, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 256, 64, 1,
"layer1.2.", (NUM_SEGMENTS, 256, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 256, 128, 2,
"layer2.0.", (NUM_SEGMENTS, 256, cur_height, cur_width))
cur_height = INPUT_H // 8
cur_width = INPUT_W // 8
x = bottleneck(network, weight_map, x.get_output(0), 512, 128, 1,
"layer2.1.", (NUM_SEGMENTS, 512, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 512, 128, 1,
"layer2.2.", (NUM_SEGMENTS, 512, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 512, 128, 1,
"layer2.3.", (NUM_SEGMENTS, 512, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 512, 256, 2,
"layer3.0.", (NUM_SEGMENTS, 512, cur_height, cur_width))
cur_height = INPUT_H // 16
cur_width = INPUT_W // 16
x = bottleneck(network, weight_map, x.get_output(0), 1024, 256, 1,
"layer3.1.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 1024, 256, 1,
"layer3.2.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 1024, 256, 1,
"layer3.3.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 1024, 256, 1,
"layer3.4.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 1024, 256, 1,
"layer3.5.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 1024, 512, 2,
"layer4.0.", (NUM_SEGMENTS, 1024, cur_height, cur_width))
cur_height = INPUT_H // 32
cur_width = INPUT_W // 32
x = bottleneck(network, weight_map, x.get_output(0), 2048, 512, 1,
"layer4.1.", (NUM_SEGMENTS, 2048, cur_height, cur_width))
x = bottleneck(network, weight_map, x.get_output(0), 2048, 512, 1,
"layer4.2.", (NUM_SEGMENTS, 2048, cur_height, cur_width))
pool2 = network.add_pooling(x.get_output(0),
window_size=trt.DimsHW(cur_height, cur_width),
type=trt.PoolingType.AVERAGE)
assert pool2
pool2.stride = (1, 1)
fc1 = network.add_fully_connected(input=pool2.get_output(0),
num_outputs=OUTPUT_SIZE,
kernel=weight_map['fc.weight'],
bias=weight_map['fc.bias'])
assert fc1
reshape = network.add_shuffle(fc1.get_output(0))
assert reshape
reshape.reshape_dims = (NUM_SEGMENTS, OUTPUT_SIZE)
reduce = network.add_reduce(reshape.get_output(0),
op=trt.ReduceOperation.AVG,
axes=1,
keep_dims=False)
assert reduce
softmax = network.add_softmax(reduce.get_output(0))
assert softmax
softmax.axes = 1
softmax.get_output(0).name = OUTPUT_BLOB_NAME
network.mark_output(softmax.get_output(0))
# Build engine
builder.max_batch_size = maxBatchSize
builder.max_workspace_size = 1 << 20
engine = builder.build_cuda_engine(network)
del network
del weight_map
return engine
def do_inference(context, host_in, host_out, batchSize):
devide_in = cuda.mem_alloc(host_in.nbytes)
devide_out = cuda.mem_alloc(host_out.nbytes)
bindings = [int(devide_in), int(devide_out)]
stream = cuda.Stream()
cuda.memcpy_htod_async(devide_in, host_in, stream)
context.execute_async(batch_size=batchSize,
bindings=bindings,
stream_handle=stream.handle)
cuda.memcpy_dtoh_async(host_out, devide_out, stream)
stream.synchronize()
def inference_mmaction2(inputs, config, checkpoint):
import torch
from mmaction.models import build_model
from mmcv import Config
from mmcv.runner import load_checkpoint
cfg = Config.fromfile(config)
cfg.model.backbone.pretrained = None
model = build_model(cfg.model,
train_cfg=None,
test_cfg=cfg.get('test_cfg'))
load_checkpoint(model, checkpoint, map_location='cpu')
model.eval()
inputs = torch.tensor(inputs)
with torch.no_grad():
return model(return_loss=False, imgs=inputs)
def main(args):
assert not (args.save_engine_path and args.load_engine_path)
if args.load_engine_path:
# load from local file
runtime = trt.Runtime(TRT_LOGGER)
assert runtime
with open(args.load_engine_path, "rb") as f:
engine = runtime.deserialize_cuda_engine(f.read())
else:
# Create network and engine
assert args.tensorrt_weights
builder = trt.Builder(TRT_LOGGER)
engine = create_engine(BATCH_SIZE, builder, trt.float32,
args.tensorrt_weights)
assert engine
assert engine.num_bindings == 2
if args.save_engine_path is not None:
# save engine to local file
with open(args.save_engine_path, "wb") as f:
f.write(engine.serialize())
print(f"{args.save_engine_path} Generated successfully.")
context = engine.create_execution_context()
assert context
host_in = cuda.pagelocked_empty(BATCH_SIZE * NUM_SEGMENTS * 3 * INPUT_H *
INPUT_W,
dtype=np.float32)
host_out = cuda.pagelocked_empty(BATCH_SIZE * OUTPUT_SIZE,
dtype=np.float32)
if args.test_mmaction2:
assert args.mmaction2_config and args.mmaction2_checkpoint, \
"MMAction2 config and checkpoint couldn't be None"
data = np.random.randn(BATCH_SIZE, NUM_SEGMENTS, 3, INPUT_H,
INPUT_W).astype(np.float32)
# TensorRT inference
np.copyto(host_in, data.ravel())
do_inference(context, host_in, host_out, BATCH_SIZE)
# pytorch inference
pytorch_results = inference_mmaction2(data, args.mmaction2_config,
args.mmaction2_checkpoint)
# test
from numpy.testing import assert_array_almost_equal
assert_array_almost_equal(host_out.reshape(-1),
pytorch_results.reshape(-1),
decimal=4)
print("MMAction2 TEST PASSED")
if args.test_cpp:
assert args.cpp_result_path, "Should set --cpp-result-path"
assert os.path.exists(args.cpp_result_path),\
f"{args.cpp_result} doesn't exist"
# C++ API fixed inputs
inputs = np.ones((BATCH_SIZE, NUM_SEGMENTS, 3, INPUT_H, INPUT_W),
dtype=np.float32)
# TensorRT inference
np.copyto(host_in, inputs.ravel())
do_inference(context, host_in, host_out, BATCH_SIZE)
# Read cpp inference results
with open(args.cpp_result_path, "r") as f:
data = f.read().strip()
cpp_results = np.array([float(d)
for d in data.split(" ")]).astype(np.float32)
# test
from numpy.testing import assert_array_almost_equal
assert_array_almost_equal(host_out.reshape(-1),
cpp_results.reshape(-1),
decimal=4)
print("CPP TEST PASSED")
if args.input_video:
# Get ONE prediction result from ONE video
# Use demo.mp4 from MMAction2
import cv2
# get selected frame id of uniform sampling
cap = cv2.VideoCapture(args.input_video)
sample_length = int(cap.get(cv2.CAP_PROP_FRAME_COUNT))
avg_interval = sample_length / float(NUM_SEGMENTS)
base_offsets = np.arange(NUM_SEGMENTS) * avg_interval
clip_offsets = (base_offsets + avg_interval / 2.0).astype(np.int32)
# read frames
frames = []
for i in range(max(clip_offsets) + 1):
flag, frame = cap.read()
if i in clip_offsets:
frames.append(cv2.resize(frame, (INPUT_W, INPUT_W)))
frames = np.array(frames)
# preprocessing frames
mean = np.array([123.675, 116.28, 103.53])
std = np.array([58.395, 57.12, 57.375])
frames = (frames - mean) / std
frames = frames.transpose([0, 3, 1, 2])
# TensorRT inference
np.copyto(host_in, frames.ravel())
do_inference(context, host_in, host_out, BATCH_SIZE)
# For demo.mp4, should be 6, aka arm wrestling
class_id = np.argmax(host_out.reshape(-1))
print(
f'Result class id {class_id}, socre {round(host_out[class_id]):.2f}'
)
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument(
"--tensorrt-weights",
type=str,
default=None,
help="Path to TensorRT weights, which is generated by gen_weights.py")
parser.add_argument("--input-video",
type=str,
default=None,
help="Path to local video file")
parser.add_argument("--save-engine-path",
type=str,
default=None,
help="Save engine to local file")
parser.add_argument("--load-engine-path",
type=str,
default=None,
help="Saved engine file path")
parser.add_argument("--test-mmaction2",
action='store_true',
help="Compare TensorRT results with MMAction2 Results")
parser.add_argument("--mmaction2-config",
type=str,
default=None,
help="Path to MMAction2 config file")
parser.add_argument("--mmaction2-checkpoint",
type=str,
default=None,
help="Path to MMAction2 checkpoint url or file path")
parser.add_argument("--test-cpp",
action='store_true',
help="Compare Python API results with C++ API results")
parser.add_argument("--cpp-result-path",
type=str,
default='./build/result.txt',
help="Path to C++ API results")
main(parser.parse_args())