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Project Accession: IBIAP_1000000016
Title: Dry fruit image dataset for machine learning applications
Representative Image:
Description: The "Dry Fruit Image Dataset" is a collection of 11500+ processed high-quality images representing 12 distinct classes of dry fruits. The 4 dry fruits—Almonds, Cashew Nuts, Raisins, and Dried Figs (Anjeer)—along with 3 sub-types of each are contained in the sub-folders, making a total of 12 distinct classes. These pictures were taken with a high-definition camera on cell phones. The dataset contains images in different lighting conditions as well as with different backgrounds. This dataset can be used for building machine learning models for the classification and recognition of Dry Fruits, requiring neat, appropriately tagged, and high-quality images. The dry fruit classification algorithm can be trained, tested, and validated using this dataset. Furthermore, it is beneficial for dry fruit research, education, and medicinal purposes.
Publications: https://doi.org/10.1016/j.dib.2023.109325
Associated Codes (URL only): N/A
Funding agency: N/A
Grant Number: N/A
Ethics Statement: Download
Any Other Information : The original version of the dataset is available at Mendeley Data (https://data.mendeley.com/datasets/yfhgn8py5f/1). The Mendeley Data citation is: Choudhary, Chetan; Kale, Atharva ; Rajput, Jaideep; Meshram, Vishal; Meshram, Vidula (2023), “Dry Fruit Image Dataset”, Mendeley Data, V1, doi: 10.17632/yfhgn8py5f.1. Please refer to Table 3 of published article, for Artificial light specifications.
Additional File: Download
Acknowledgments: No specific grant was provided for this research by public, private, or not-for-profit funding organizations.

Sr.No First name Last name Email Organization Designation
1 Vishal Meshram vishal.meshram@viit.ac.in Vishwakarma Institute of Information Technology, Pune, India Principal Investigator
2 Chetan Choudhary N/A Vishwakarma Institute of Information Technology, Pune, India Unspecified
3 Atharva Kale N/A Vishwakarma Institute of Information Technology, Pune, India Unspecified
4 Jaideep Rajput N/A Vishwakarma Institute of Information Technology, Pune, India Unspecified
5 Vidula Meshram N/A Vishwakarma Institute of Information Technology, Pune, India Unspecified
6 Amol Dhumane N/A Pimpri Chinchwad College of Engineering, Pune, India Unspecified

Study Accession: PPS_1000000020
Title: Dry fruit image dataset for machine learning applications
Imaging Type: Plant Photography (PP)
Imaging Sub-type: Not Applicable
Summary: Dry fruits are convenient and nutritious snacks that can provide numerous health benefits. They are packed with vitamins, minerals, and fibres, which can help improve overall health, lower cholesterol levels, and reduce the risk of heart disease. Due to their health benefits, dry fruits are an essential part of a healthy diet. In addition to health advantage, dry fruits have high commercial worth. The value of the global dry fruit market is estimated to be USD 6.2 billion in 2021 and USD 7.7 billion by 2028. The appearance of dry fruits is utilized for assessing their quality to a great extent, requiring neat, appropriately tagged, and high-quality images. Hence, this dataset is a valuable resource for the classification and recognition of dry fruits. With over 11500+ high-quality processed images representing 12 distinct classes, this dataset is a comprehensive collection of different varieties of dry fruits. The four dry fruits included in this dataset are Almonds, Cashew Nuts, Raisins, and Dried Figs (Anjeer), along with three subtypes of each. This makes it a total of 12 distinct classes of dry fruits, each with its unique features, shape, and size. The dataset will be useful for building machine learning models that can classify and recognize different types of dry fruits under different conditions, and can also be beneficial for dry fruit research, education, and medicinal purposes. Due to their nutritional value and health advantages, dry fruits have been consumed for a very long time. One of the best strategies to improve general health is to include dry fruits in the diet.
Keywords: Computer vision; Dehydrated fruits; Fruit Classification; Fruit detection; Image classification; Machine learning
Additional / Any Other Information: N/A
Release Date: April 24, 2025
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_10000000045Prunus dulcis 3755 SeedNot ApplicableN/AN/AN/A
PPSMT_10000000046Anacardium occidentale 171929 SeedNot ApplicableN/AN/AN/A
PPSMT_10000000047Ficus carica 3494 FruitNot ApplicableN/AN/AN/A
PPSMT_10000000048Vitis vinifera 29760 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 Data Collection Duration Data Source Location Dry Fruit Class Dry Fruit Subclass Geographic Location (region and locality) Image Capture Direction Image Data Type
PPSMT_10000000048 PPSM_10000258618 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258619 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258620 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258622 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258623 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258624 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258625 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258626 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258627 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258628 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258629 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258630 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258631 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258632 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258633 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258634 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258635 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258636 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258638 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit
PPSMT_10000000048 PPSM_10000258639 Fruit Raisin_Premium Vishwakarma Institute of Information Technology, Kapil Nagar, Kondhwa Budruk, Pune – 411048, Maharashtra, India. February to March N/A Raisin Premium Kapil Nagar, Kondhwa Budruk, Pune Front/Back/Side/Top/Bottom Dry Fruit

Table 3. The experiment types registered under this study are as follows:
Experiment Type IDInstrument NameInstrument TypeManufacturerModel
PPET_10000000018CameraMobileApple/MotorolaiPhone13/Moto G40 fusion


Experimental Design Summary (PPET_10000000018)
The dry fruit images were captured using two different makes of camera, that were Apple's iPhone 13 and Motorola's Moto G40 fusion mobiles' rear camera having high resolution. In all, 11500+ images were captured with a camera and then stored in various folders according to their category and classification. Four different backgrounds, two lighting conditions, and various angles are used for capturing the images of dry fruit. The Dry Fruit Image Dataset was created to include high-quality images of major dry fruits that are consumed and exported. It consists of four types of dry fruit each, namely, Almond, Cashew, Dried Fig, and Raisins. Each type of dry fruit is further categorized into three major subclasses. Almond has three subclasses namely, Regular, Sanora, and Mamra. Cashew has subclasses namely, Regular, Special, and Jumbo. Raisin has subclasses namely, Black, Grade 1, and Premium. Fig has subclasses namely, Small, Medium, and Jumbo. Hence, a total of 12 different classes are contained in the dataset. The dry fruits were taken in various lighting conditions and backgrounds, namely, artificial light and natural light, while the backgrounds included white, black, green, and human palms. Data collection took place in February and March. In the VIIT lab, typical images were taken in a variety of lighting, background, and angle situations. The dataset utilized in this study comprises two primary light sources: Natural Sunlight and Artificial light. Natural Sunlight served as the natural light source, with a range of sunlight angles spanning from 60° to 120°. Additionally, two LEDs were employed as the Artificial light sources. Images were pre-processed using a Python script and Microsoft Power Automate. The dimensions of the images, 512 × 512 make it easier to build object classification models.

Acquired Images Annotation Description (PPET_10000000018)
After the survey in the local stores and wholesaler market, all twelve classes of dry fruits i.e. Almond Mamra, Almond Regular, Almond Sanora, Cashew Jumbo, Cashew Regular, Cashew Special, Fig Jumbo, Fig Medium, Fig Small, Raisin Black, Raisin Grade 1, Raisin Premium, were purchased from PUNE, INDIA. The photographs are taken under a range of environmental circumstances, including various lighting situations and backgrounds shot from various viewpoints. All of the images were arranged in the following order: almond, cashew, fig, and sultana. There are three separate folders for each category/grade of dry fruit, such as Mamra, Sanora, Regular for Almond, and so on.

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) Artificial Light Source Camera Used to Capture Images Image Background Colour LEDs Light Position Original Images Size (in pixels) Scaled Images Size (in pixels)
PPSM_10000250106 PPET_10000000018 PPE_10000221374 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250117 PPET_10000000018 PPE_10000221385 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250139 PPET_10000000018 PPE_10000221407 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250150 PPET_10000000018 PPE_10000221418 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250159 PPET_10000000018 PPE_10000221427 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250162 PPET_10000000018 PPE_10000221430 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250173 PPET_10000000018 PPE_10000221441 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250184 PPET_10000000018 PPE_10000221452 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250195 PPET_10000000018 PPE_10000221463 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250206 PPET_10000000018 PPE_10000221474 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250217 PPET_10000000018 PPE_10000221485 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250228 PPET_10000000018 PPE_10000221496 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250250 PPET_10000000018 PPE_10000221518 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250261 PPET_10000000018 PPE_10000221529 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250272 PPET_10000000018 PPE_10000221540 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250283 PPET_10000000018 PPE_10000221551 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250294 PPET_10000000018 PPE_10000221562 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250305 PPET_10000000018 PPE_10000221573 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250316 PPET_10000000018 PPE_10000221584 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512
PPSM_10000250327 PPET_10000000018 PPE_10000221595 Derived N/A Artificial/Natural Apple iPhone 13 (12-megapixel, back camera)/Motorola Moto G40 Fusion (64-megapixel, rear camera) N/A LED Back/Rear Black/White/Green/Human Palm Two LEDs were positioned at a 45° angle relative to the surface of the background setup, one on each side. 3042×4032 512×512

Experiment ID Image File Name (with path) Image Preview Image Size
PPE_10000223782DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_441.jpg

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20K
PPE_10000223783DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_442.jpg

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24K
PPE_10000223784DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_443.jpg

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24K
PPE_10000223785DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_444.jpg

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36K
PPE_10000223786DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_445.jpg

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32K
PPE_10000223787DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_446.jpg

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32K
PPE_10000223788DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_447.jpg

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36K
PPE_10000223789DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_448.jpg

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32K
PPE_10000223790DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_449.jpg

Download Image
32K
PPE_10000223791DRY_FRUIT_IMAGE_DATASET/CASHEW/CASHEW_SPECIAL/CASHEW_SPECIAL_450.jpg

Download Image
32K