Go back

Study Complete Details




Project Accession: IBIAP_1000000005
Title: FruitNet: Indian fruits image dataset with quality for machine learning applications
Representative Image:
Description: Fast and precise fruit classification or recognition as per quality parameter is the unmet need of agriculture business. This is an open research problem, which always attracts researchers. Machine learning and deep learning techniques have shown very promising results for the classification and object detection problems. Neat and clean dataset is the elementary requirement to build accurate and robust machine learning models for the real-time environment. With this objective we have created an image dataset of Indian fruits with quality parameter which are highly consumed or exported. Accordingly, we have considered six fruits namely apple, banana, guava, lime, orange, and pomegranate to create a dataset. The dataset is divided into three folders (1) Good quality fruits (2) Bad quality fruits, and (3) Mixed quality fruits each consists of six fruits subfolders. Total 19,500+ images in the processed format are available in the dataset. We strongly believe that the proposed dataset is very helpful for training, testing and validation of fruit classification or reorganization machine leaning model.
Publications: https://www.sciencedirect.com/science/article/pii/S2352340921009616
Funding agency: There is no funding for the present effort.
Grant Number: N/A
Ethics Statement: N/A
Any Other Information : N/A
Additional File: N/A
Acknowledgments: N/A

Sr.No First name Last name Email Organization Designation
1 Vishal Meshram vishal.meshram-020@vupune.ac.in Vishwakarma University, India Principal Investigator
2 Kailas Patil kailas.patil@vupune.ac.in Vishwakarma University, India Principal Investigator

Study Accession: PPS_1000000009
Title: FruitNet: Indian Fruits Dataset with quality (Good, Bad & Mixed quality)
Imaging Type: Plant Photography (PP)
Imaging Sub-type: Not Applicable
Summary: The profit percentage share of fruit market is substantial with respect to the total agriculture output. In the agro-industry fast and accurate fruit classification is the highest need. The fruits can be classified into different classes as per their external features like shape, size and color using some computer vision and deep learning techniques. High quality images of fruits are required to solve fruit classification and recognition problem. To build the machine learning models, neat and clean dataset is the elementary requirement. With this objective we have created the dataset of six popular Indian fruits named as “FruitNet”. This dataset consists of 19500+ high-quality images of 6 different classes of fruits in the processed format. The images are divided into 3 sub-folders 1) Good quality fruits 2) Bad quality fruits and 3) Mixed quality fruits. Each sub-folder contains the 6 fruits images i.e. apple, banana, guava, lime, orange, and pomegranate. Mobile phone with a high-end resolution camera was used to capture the images. The images were taken at the different backgrounds and in different lighting conditions. The proposed dataset can be used for training, testing and validation of fruit classification or reorganization model.
Keywords: Convolutional neural network; Computer vision; Deep learning; Fruit classification; Fruit detection; Fruit image dataset; Machine learning
Additional / Any Other Information: N/A
Release Date: Oct. 23, 2024
Access Licence Type: Open Access

Table 1. The sample types registered under this study are as follows:
Sample Type IDOrganismTaxon IDBiological EntityLateralitySource TissueSource Cell/Cell-lineCell Organelle
PPSMT_10000000008Malus pumila 283210 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000009Musa 4640 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000010Psidium guajava 120290 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000012Citrus sinensis 2711 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000013Punica granatum 22663 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000011Citrus aurantiifolia 159033 FruitNot ApplicableN/AN/AN/A

Table 2. The samples registered under this study are as follows:
Sample Type ID Sample ID Plant Part Used Plant Variety Name Sample Source Geographic Location (latitude) Geographic Location (longitude) Quality class
PPSMT_10000000011 PPSM_10000014703 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014726 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014749 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014772 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014795 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014818 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014212 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014841 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014864 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014887 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014910 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014933 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014956 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000014979 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000015002 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000015025 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000015048 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000015071 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000008 PPSM_10000006906 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality
PPSMT_10000000011 PPSM_10000015094 Fruit N/A Vishwakarma University, Pune; Hubtown Countrywoods Society, Pune 18.4603° N; 18.442866 ° N 73.8836° E; 73.884894° E Bad quality

Table 3. The experiment types registered under this study are as follows:
Experiment Type IDInstrument NameInstrument TypeManufacturerModel
PPET_10000000004CameraSmart PhoneApple/ZUK/RealmeiPhone 6/Z2 Plus/Realme 5 Pro


Experimental Design Summary (PPET_10000000004)
The fruit images were acquired using three different make of camera's i.e. iPhone6 (Apple), ZUK (Z2 Plus), and Realme (Realme 5 Pro) mobile's high resolution rear camera. In all 19500+ images were captured using camera and then were segregated and saved in respective folders as per their quality and classification. The fruit images are captured in the natural and artificial lighting conditions with different directions/angles (front direction, top view, backward direction, bottom view, direction rotated 180 degrees) and background (dark color, grass, light color, ground, multicolor) in months of July to October. Images pre-processing is done using python script. In the pre-processing we changed the dimensions to 256 × 256 which is standard resolution required to build object classification or object detection model. The fruit images are captured using Apple iphone 6 with rear camera of 8 megapixels, Z2 plus with rear camera of 13 megapixel, and realme 5 pro with rear camera of 48 megapixels. All dataset images of original size 3024 × 3024 were resized to 256 × 256 dimensions using a python script. The images are in .jpg images. The images acquired in variety of environmental conditions such as different light conditions, different background, and from different angles. For more details, please refer to table 2 and table 3 (in the published article).

Acquired Images Annotation Description (PPET_10000000004)
After capturing the images were organized as Bad quality, Good quality, and Mixed quality folders. Further each quality folder has six different folders of fruit classes i.e. apple, banana, guava, lime, orange, and pomegranate, respectively.

Table 4. The experiments registered under this study are as follows:
Sample ID Experiment Type ID Experiment ID Image type (Original / Derived / Unknown) Any Other Information Light Source Camera Specifications Images Resolution (in MP) Data Repository Name (If already deposited in a repository) Direct URL to Data Download (Other than IBIA portal) Type of Images
PPSM_10000007171 PPET_10000000004 PPE_10000007173 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007172 PPET_10000000004 PPE_10000007174 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007173 PPET_10000000004 PPE_10000007175 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007175 PPET_10000000004 PPE_10000007177 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007176 PPET_10000000004 PPE_10000007178 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007177 PPET_10000000004 PPE_10000007179 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007179 PPET_10000000004 PPE_10000007181 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007180 PPET_10000000004 PPE_10000007182 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007181 PPET_10000000004 PPE_10000007183 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007183 PPET_10000000004 PPE_10000007185 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007184 PPET_10000000004 PPE_10000007186 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007185 PPET_10000000004 PPE_10000007187 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007187 PPET_10000000004 PPE_10000007189 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007188 PPET_10000000004 PPE_10000007190 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007189 PPET_10000000004 PPE_10000007191 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007191 PPET_10000000004 PPE_10000007193 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007192 PPET_10000000004 PPE_10000007194 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007193 PPET_10000000004 PPE_10000007195 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007195 PPET_10000000004 PPE_10000007197 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw
PPSM_10000007196 PPET_10000000004 PPE_10000007198 Derived N/A Natural/Artificial Mobile phone rear camera Not specified Mendeley Data https://data.mendeley.com/datasets/b6fftwbr2v/1 Raw

Experiment ID Image File Name (with path) Image Preview Image Size
PPE_10000006840FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085623.jpg

Download Image
24K
PPE_10000006841FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085624.jpg

Download Image
24K
PPE_10000006842FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085626.jpg

Download Image
20K
PPE_10000006843FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085627.jpg

Download Image
20K
PPE_10000006844FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085629.jpg

Download Image
24K
PPE_10000006845FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085630.jpg

Download Image
24K
PPE_10000006846FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085632.jpg

Download Image
24K
PPE_10000006847FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085633.jpg

Download Image
24K
PPE_10000006848FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085637.jpg

Download Image
24K
PPE_10000006849FruitNet_Processed_Images/Processed_Images_Fruits/Bad_Quality_Fruits/Lime_Bad/IMG_20190820_085638.jpg

Download Image
24K