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基於CNN對易混淆中藥的手機辨識系統
Recognition	of	Easily-confused	TCM	Herbs	
Using Convolutional	Neural	Network
On	The	Smartphone
Kun-chan Lan (藍崑展)
National Cheng Kung University
Joint work with Min-Chun Hu and
Juei-Chun Weng
1GTC	Taiwan	2017
A	little	about	me
• Background in sensor network (aka. IoT)
•2011: experienced TCM
•2013: started doing research on TCM
• smartphone APPs for TCM
• Tongue diagnosis (https://lens.csie.ncku.edu.tw/~john/)
• AR-based acupoint localization
(https://www.youtube.com/watch?time_continue=1&v=RyzKMuo3Gjo)
• TCM Herb recognition
•2015: studying TCM at China Medical University
(中國醫藥⼤學)
2
GTC	Taiwan	2017
TCM	101
• Based on thousands of years of clinical experiences
• Data -> model (similar to DNN?)
• Treat by symptom 症(personalized treatment)
• Considering individual constitution and the interaction with the
environment
• Western Medicine : Treat by disease 病(same treatment for same disease)
• Four diagnoses (四診) : collect biometrics using sensors on the human body
• Inspection (望)
• Listen and smell (聞)
• Inquiry (問)
• Palpation (切)
3
GTC	Taiwan	2017
Chinese	Herbal	Medicine		
• Traditional	Chinese	medicine	(TCM)	originated	in	China	and	has	
evolved	over	5000 years. TCM is one of Complementary Medicines
(互補醫學) recognized by World Health Organization (WHO)
• Chinese	Herbal	Medicine	(CHM)	is one	of	the important	therapies	in	
TCM (⼀針,	⼆灸,	三湯藥)
4
GTC	Taiwan	2017
Easily-confused	herbs	
5
山藥 木薯
黃耆 紅耆
人參 西洋參
川木通 關木通
川母貝(松貝) 平母貝
黃芩 綠黃芩
GTC	Taiwan	2017
黃耆 vs.	紅耆
•Some TCM herbs have similar shape and
color but different utilities and cost.
6
GTC	Taiwan	2017
Smartphone	to	the	rescue?	
Information
Illustrated	handbooks Smartphones
7
GTC	Taiwan	2017
Internet
A	simple	client-server	framework	
Pre-trained
Clustering
Model
Pre-trained
Classification	
Model
CHM
Info.
Image
Preprocessing
Predict	
Result
server
8
GTC	Taiwan	2017
Prior	work	on	TCM	herb	recognition
Tao	et	al.	 Liu	et	al.	 Sun	et	al. Ours
Category 18 8 95 24
Confused Herbs	Pair	 1 0 2 10
Method Hand-Crafted	Method Hand-Crafted	Method CNN Hierarchical	Clustering
CNN
Implemented	on	
smartphone
No No No Yes
9
GTC	Taiwan	2017
What	we	did	(	a	demo)
• 山藥 vs. 木
• 黃耆 vs. 紅耆
• GTC-demo_video.wmv
10
Test1 Test2 Test3 Test4 Test5 Avg.
Xiaomi 3.083 2.535 2.755 2.856 2.508 2.7474(s)
Asus 2.594 2.907 3.133 2.294 2.820 2.7496(s)
Smartphones
recognition	time
GTC	Taiwan	2017
Why	Deep	Learning?
• With	traditional	hand-crafted	methods,	It	is	not	easy	to	find	
representative	features	for	easily-confused	TCM	herbs.	
• Deep	learning	can	automatically	learn	about	the	features.
Color?
Shape?
Texture?
11
GTC	Taiwan	2017
CNN-CaffeNet
24
12
GTC	Taiwan	2017
Dataset	(中藥飲片)
• CHM dataset collected by iPhone6 camera.
• 2400 images of 24 CHMs
• 1440 images for training
• 960 images for testing
山藥(A1) 木薯(A2)
黃耆(B1) 紅耆(B2)
人參(C1) 西洋參(C2) 綠衣枳實(F1)	 枳實(F2)
川木通(D1) 關木通(D2)
川母貝(松貝)	(E1)	 平母貝(E2)
川烏(G1)	 草烏(G2)	
黃芩(H1) 綠黃芩(H2)
半夏(I1)	 水半夏(I2)
石蓮子(J1) 苦石蓮(J2)
川牛膝(K1) 味牛膝(K2)
北板藍根(L1) 南板藍根(L2)
13
GTC	Taiwan	2017
Experimental	Environment
• INTEL	i7-4790 CPU	&	16GB	RAM
• NVIDIA	GTX	1060
• Python
• Caffe
14
GTC	Taiwan	2017
Result
Naïve	CNN	Method
15
Training Phase
Testing Phase
Input	Image
Pre-trained
CNN	Model
CNN
Model
Feature	Extraction
Training	Images
…
GTC	Taiwan	2017
16
80%
84%
88%
92%
96%
100%
A1 A2 B1 B2 C1 C2 D1 D2 E1 E2 F1 F2 G1 G2 H1 H2 I1 I2 J1 J2 K1 K2 L1 L2 Avg
CNN HCNN	by	AP	algorithm	(Average) HCNN	by	illustrated	handbook
poor	results	for	some	herbs	(green	bars)
GTC	Taiwan	2017
Hierarchical	Clustering	CNN
17
GTC	Taiwan	2017
Result
Hierarchical	Clustering	CNN	Method
18
Training Phase
Testing Phase
Input	Image
Second-layer
CNN-based
Classification-1	ModelFirst-layer
CNN-based	
Clustering	
Model
First-layer
Pre-trained
Clustering
Model
Second-layer
Pre-trained
Classification	Model
Training	Images
…
…
CNN-based
Classification-n	Model
Second-layer
If	there	are	more	
than	one	category	
in	the	group
Data	clustering
GTC	Taiwan	2017
Clustering:	Affinity	Propagation
Training	Images
…
Affinity	Propagation
algorithm
Feature	
Extraction
Each	kind	of	herbs	
randomly	samples	
images.
Each	kind	of	herbs	decides	
an	final	exemplar.	
If	the	exemplar	of	two	kind	
of	herbs	are	the	same,	we	
cluster	two	herbs	into	a	
group.
1
2
3
19
.	"Clustering	by	passing	messages	between	data	points".
Science. 315 (5814): GTC	Taiwan	2017
current	results
20GTC	Taiwan	2017
Usefulness	of	CNN?
• Hand-Crafted Method
• SIFT
• HOG
• LBP
• SVM(classifier)
CNN method
• CaffeNet model
(5 conv layers)
• VGG16 model
(13 conv layers)
Test time(s)
1.93684
5.95769
Using	five-fold	cross	validation	to	calculate	accuracy
21
Method Accuracy
LBP+SVM 86.85%
HOG+SVM 75.31%
SIFT+SVM 70.83%
Method Accuracy
CNN[CaffeNet] 95.69%
CNN[VGG16] 95.63%
GTC	Taiwan	2017
Effect	of	Fine-tune
• Fine-tune by pre-trained CaffeNet model (based on ImageNet
data)
22
0.0%
10.0%
20.0%
30.0%
40.0%
50.0%
60.0%
70.0%
80.0%
90.0%
100.0%
0 1 2 4 6 8 10 20 30 40 50 60 70 80 90 100 110 120 130 140 150 160 170 180 190 200 210 220 230 240 250
Accuracy
Iterations
Fine-tune Re-train
GTC	Taiwan	2017
CNN	vs.	HCNN	
80%
84%
88%
92%
96%
100%
A1 A2 B1 B2 C1 C2 D1 D2 E1 E2 F1 F2 G1 G2 H1 H2 I1 I2 J1 J2 K1 K2 L1 L2 Avg
CNN HCNN	by	AP	algorithm	(Average) HCNN	by	illustrated	handbook
Using	five-fold	cross	validation	to	calculate	accuracy
95.63%
97.54%
97.85%
88.80%
93.55%
94.5%
80%
84%
88%
92%
96%
100%
A1 A2 B1 B2 C1 C2 D1 D2 E1 E2 F1 F2 G1 G2 H1 H2 I1 I2 J1 J2 K1 K2 L1 L2 Avg
CNN HCNN	by	AP	algorithm	(Average) HCNN	by	illustrated	handbook
1 2 3 4 5 6 7 8 9 10
97.65% 97.48% 97.85% 97.08% 97.85% 97.88% 97.48% 97.23% 97.65% 97.23% 23
GTC	Taiwan	2017
Effect	of	Smartphones?
iPhone Xiaomi Samsung Asus
24
GTC	Taiwan	2017
Effect	of	Smartphones
A1 A2 B1 B2 C1 C2 D1 D2 E1 E2 F1 F2 G1 G2 H1 H2 I1 I2 J1 J2 K1 K2 L1 L2 Avg.
iPhone 100.00% 95.00% 85.00% 80.00% 92.50% 77.50% 95.00% 97.50% 97.50% 97.50% 90.00% 95.00% 92.50% 97.50% 92.50% 85.00% 80.00% 92.50% 100.00% 100.00% 100.00% 92.50% 87.50% 100.00% 92.60%
Xiaomi 100.00% 75.00% 95.00% 70.00% 62.50% 60.00% 82.50% 100.00% 87.50% 62.50% 85.00% 77.50% 100.00% 70.00% 65.00% 87.50% 100.00% 60.00% 90.00% 95.00% 87.50% 92.50% 92.50% 90.00% 82.81%
Samsung 100.00% 95.00% 85.00% 72.50% 100.00% 60.00% 100.00% 100.00% 67.50% 97.50% 100.00% 100.00% 95.00% 97.50% 100.00% 47.50% 97.50% 80.00% 100.00% 100.00% 100.00% 100.00% 87.50% 80.00% 90.10%
Asus 100.00% 70.00% 90.00% 62.50% 70.00% 35.00% 87.50% 100.00% 100.00% 85.00% 97.50% 55.00% 100.00% 87.50% 50.00% 95.00% 82.50% 67.50% 77.50% 100.00% 90.00% 90.00% 87.50% 82.50% 81.77%
Avg 100.00% 83.75% 88.75% 71.25% 81.25% 58.13% 91.25% 99.38% 88.13% 85.63% 93.13% 81.88% 96.88% 88.13% 76.88% 78.75% 90.00% 75.00% 91.88% 98.75% 94.38% 93.75% 88.75% 88.13% 86.82%
25
iPhone iPhone
Xiaomi
Samsung
Asus
value value
The	number	of	pixels
The	number	of	pixels
GTC	Taiwan	2017
Not	enough	data	=>	data	augmentation?
Zoom	In
Zoom	OutClockwise	Rotation
Counter-clockwise Rotation Darken
Brighten
26
GTC	Taiwan	2017
Data	Augmentation
(1).	iPhone	camera	(The	original	training	data)
iPhone
1440	images
(2).	iPhone	camera	+	AUG*2(Rotation)
(3).	iPhone	camera	+	AUG*4(Rotation+Size)
(4).	iPhone	camera	+	AUG*6(Rotation+Size+Brightness)
iPhone
1440	images
iPhone
10080	images
iPhone
7200	images
iPhone
4320	images
(6).	4	smartphones	camera	+	AUG*6
iPhone
1440	images
Xiaomi
1440	images
Samsung
1440	images
ASUS
1440	images
iPhone
10080	images
Xiaomi
10080	images
Samsung
10080	images
ASUS
10080	images
(5).	4	smartphones	camera
iPhone
1440	images
Xiaomi
1440	images
Samsung
1440	images
ASUS
1440	images
Model	trained	by	6	different	training	data
27
GTC	Taiwan	2017
data	augmentation	vs.	adding	more	phone	data
70.00%
75.00%
80.00%
85.00%
90.00%
95.00%
100.00%
iPhone Xiaomi Samsung Asus Average
1 2 3 4 5 6
Training	Data
1. iPhone	camera	
2. iPhone	camera	+	AUG*2(Rotation)
3. iPhone	camera	+	AUG*4(Rotation	+	Size)
4. iPhone	camera	+	AUG*6(Rotation	+	Size	+	Brightness)
5. 4	smartphones	camera
6. 4	smartphones	camera	+	AUG*6
iPhone Xiaomi Samsung Asus Average
1 92.60% 82.81% 90.10% 81.77% 86.82%
2 92.81% 84.48% 88.13% 84.27% 87.42%
3 94.27% 85.21% 88.96% 84.58% 88.26%
4* 94.48% 88.96% 91.02% 90.52% 91.24%
5* 94.06% 93.02% 95.31% 93.85% 94.06%
6 96.04% 95.83% 96.25% 94.90% 95.76%
28
GTC	Taiwan	2017
Conclusions
• Automatic	recognition	of	24	easily-confused	CHMs	on	the	smartphone.
• Compared	to	traditional	hand-crafted	method,	CNN	works	better!
• We	propose	a	hierarchical	CNN	method	which	automatically	clusters	the	
herbs	using	AP	algorithm.	This	brings	an	accuracy	improvement	up	to	5%	
for	some	TCM	herbs
• Differences	between	phones	need	to	be	considered	when	designing	image	
recognition	Apps	on	the	phone
29
GTC	Taiwan	2017
Future	work
• Short term
• Collect data for all 300+ TCM
herbs
• Try with more different phones
under different lighting conditions
• Long term
• A TCM robot assistant
30
GTC	Taiwan	2017

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