| Literature DB >> 30065777 |
Ping Lin1, Du Li1, Zhiyong Zou2, Yongming Chen1, Shanchao Jiang1.
Abstract
BACKGROUND: The images of different flower species had small inter-class variations across different classes as well as large intra-class variations within a class. Flower classification techniques are mainly based on the features of color, shape and texture, however, the procedure always involves too many heuristics as well as manual labor to tweak parameters, which often leads to datasets with poor qualitative and quantitative measures. The current study proposed a deep architecture of convolutional neural network (CNN) for the purposes of improving the accuracy of identifying the white flowers of Fragaria × ananassa from other three wild flower species of Androsace umbellata (Lour.) Merr., Bidens pilosa L. and Trifolium repens L. in fields.Entities:
Keywords: Convolutional neural network; Flower; Fragaria × ananassa; Identify
Year: 2018 PMID: 30065777 PMCID: PMC6063021 DOI: 10.1186/s13007-018-0332-5
Source DB: PubMed Journal: Plant Methods ISSN: 1746-4811 Impact factor: 4.993
Summary of four white flower species of Androsace umbellata (Lour.) Merr., Bidens pilosa L., Trifolium repens L. and Fragaria × ananassa
| Family | Scientific name | Characteristics | Distribution and habitat | Image |
|---|---|---|---|---|
| Primulaceae | Corolla regular (salverform or funnel-shaped), white, 4–6 mm broad; petals 5, quite round, touching each other, 4–6 mm in diameter, with a yellow eye. Calyx barely shorter than the corolla,3–4 mm diameter, 5-lobed, green; calyx broadly campanulate to subglobose or hemispheric, not keeled, glabrous, pilose, or puberulent; anthers subsessile. Inflorescence umbels [ | Widely distributed in the mountains of central Asia, the Caucasus, and the southern and central European mountain systems, particularly the Alps and the Pyrenees. The species and their varieties bear vernacular names based on their characteristics. For example, they are known by such names as Rock Jasmine in English, Dian Dimei in China and Bom Maj I in Korean. They can be found in open grassy areas, roadsides, crops, pastures, gardens, shady places or near streams, ditches or moist embankments |
| |
| Asteraceae | Corolla regular (radiate strap-shaped), white or cream, 5–15 mm broad; 5–8 ray petals, tubular bright yellow or orange disk florets in the center, 3.5–5 mm long. Inflorescence an isolated or grouped pedunculated capitula, emerging from the leaf axil [ | It is thought to originate in South America and subsequently spread all over the world. The species and their varieties bear vernacular names based on their characteristics. For example, the species are known by such names as Spanish needles, Beggar’s ticks, Devil’s needles, Cobbler’s pegs, Broom stick and Pitchforks in English and some other languages because of their sticky achenes and are sometimes known as Xian Fengcao (“all bountiful grass”) in Chinese because of their prosperous growth. They can invade roadsides, crops, pastures, gardens, disturbed areas, fallow lands and urban open space |
| |
| Fabaceae | Corolla zygomorphic, white (sometimes slightly reddish), later brownish, 8–10 mm long, fused at base. Petals 5; the upstanding the ‘standard’, the lateral two the ‘wings’, the lower two united to form the ‘keel’, overall shape of corolla being butterfly-like. Calyx 5-lobed, glabrous. Stamens 10. A single carpel. Inflorescence a long-stalked, densely globose head, flowers fragrant [ | Native to Europe and central Asia and has become one of the most widely distributed legumes in the world. The species are sometimes known as the White clover, Dutch clover and Ladino clover. The species thrive best in a cool, moist climate in soils with ample lime, phosphate, and potash. In general, it is best adapted to clay and silt soils in humid and irrigated areas. It grows successfully on sandy soils with a high-water table or irrigated droughty soils when adequately fertilized |
| |
| Rosaceae | Corolla regular (actinomorphic), white, 12–18 mm broad; petals 5, quite round, touching each other or covering edges of each other, 4–6 mm long. Calyx 5-lobed; with epicalyx. Stamens 20. Gynoecium separate, pistils several. Receptacle glabrous. Inflorescence a lax cyme [ | Firstly bred via a cross of |
|
Fig. 1The overall deep architecture of convolutional neural network for detecting four species of white flower species including Androsace umbellata (Lour.) Merr., Bidens pilosa L., Trifolium repens L. and Fragaria × ananassa. The arrangement of system is presented from left to right in the order: original image data is waiting for analysis at the input level on the left, the feature extraction procedure is performed in the middle layer surrounded the pink dashed rectangle and the determined flower attributes are completed in the final level bounded right green dashed rectangle
Layers property of the CNN architecture. The network consists of twenty-five layers. There are eight layers with learnable weights: five convolutional layers, and three fully connected layers
| No. | Layer name | Description |
|---|---|---|
| 1 | Image input | 227 × 227 × 3 true color images with zerocenter standardization |
| 2 | 1st-level convolution | 96 channels, 11 × 11 × 3 convolutions |
| 3 | ReLU | Rectified linear units |
| 4 | Cross channel standardization | Cross channel standardization with 5 channels per element |
| 5 | Max pooling | 3 × 3 max pooling |
| 6 | 2nd-level convolution | 256 channels, 5 × 5 × 48 convolutions |
| 7 | ReLU | Rectified linear units |
| 8 | Cross channel standardization | Cross channel standardization with 5 channels per element |
| 9 | Max pooling | 3 × 3 max pooling |
| 10 | 3rd-level convolution | 384 channels, 3 × 3 × 256 convolutions |
| 11 | ReLU | Rectified linear units |
| 12 | 4th-level convolution | 384 channels, 3 × 3 × 192 convolutions |
| 13 | ReLU | Rectified linear units |
| 14 | 5th-level convolution | 256 channels, 3 × 3 × 192 convolutions |
| 15 | ReLU | Rectified linear units |
| 16 | Max pooling | 3 × 3 max pooling |
| 17 | 6th-level fully connected layer | 4096 fully connected layer |
| 18 | ReLU | Rectified linear units |
| 19 | Dropout | 50% of dropout |
| 20 | 7th-level fully connected layer | 4096 fully connected layer |
| 21 | ReLU | Rectified linear units |
| 22 | Dropout | 50% of dropout |
| 23 | 8th-level fully connected layer | 4 fully connected layer |
| 24 | Softmax | Softmax |
| 25 | Comprehension output | Crossentropyex with |
Fig. 2Illustrate the 96 channels of captured rich structure and texture feature information from the Fragaria × ananassa flower image in the first convolutional layer by using size of 11 × 11 convolutional kernels. These images contain from a different variety of frequency-, orientation- and color-selective features
Fig. 3Five curves of training loss function of a twenty-five-layer architecture of convolutional neural network in the iteration optimization process with momentum coefficients of = 0.1, 0.3, 0.5, 0.7 and 0.9 on the white flower dataset
Fig. 4Confusion matrix diagrams of discriminating four different species of white flowers of Androsace umbellata (Lour.) Merr., Bidens pilosa L., Trifolium repens L. and Fragaria × ananassa images based on deep learning artifices of convolutional neural network on the training (a) and test (b) dataset, respectively
Fig. 5Precision-recall curves of detecting four species of white flowers including Androsace umbellata (Lour.) Merr., Bidens pilosa L., Trifolium repens L. and Fragaria × ananassa based on deep learning methods of convolutional neural networks on the training (a) and test (b) dataset, respectively
Accuracy and mean average precision (mAP) scores of detecting four species of white flowers includingAndrosace umbellata (Lour.) Merr., Bidens pilosa L., and Trifolium repens L. and Fragaria × ananassa based on deep learning methods of convolutional neural network on the training and test dataset, respectively
| Method | Training set | Test set | ||
|---|---|---|---|---|
| Accuracy (%) | mAP | Accuracy (%) | mAP | |
| SIFT + SVM | 82.9 | 0.960 | 55.6 | 0.794 |
| PHOG + SVM | 78.3 | 0.900 | 63.1 | 0.744 |
| CNNs | 99.2 | 0.983 | 95.0 | 0.974 |