Good And Bad classification of Cabbage and Potato Curry

Published: 28 January 2025| Version 1 | DOI: 10.17632/44dvydc7tg.1
Contributors:
Suraj Mondal, Tanmay Sarkar

Description

Data Description for the Project: Good and Bad Classification of Cabbage and Potato Curry The dataset consists of 1000 samples of Cabbage and Potato Curry, divided equally into two categories: Good (500 samples) and Bad (500 samples). Each sample has been evaluated based on sensory, physical, and chemical parameters that determine its quality and acceptability. The goal of the project is to classify the samples accurately into "Good" or "Bad" based on these parameters. Below is a detailed description of the dataset: 1. Sensory Attributes These parameters assess the overall sensory quality of the curry: Appearance: Color consistency and visual appeal (measured on a 1–10 scale). Texture: Softness of the vegetables, uniformity, and absence of undesirable textures (1–10 scale). Aroma: Freshness and pleasantness of the aroma (1–10 scale). Taste: Flavor profile, including saltiness, sweetness, and bitterness (1–10 scale). 2. Physical Attributes These parameters include measurable physical properties: Moisture Content (%): The percentage of moisture in the sample. Particle Size Distribution: The uniformity of cabbage and potato pieces. Foreign Matter: Presence of impurities such as stones or extraneous particles (binary: 0 for absent, 1 for present). 3. Chemical Attributes These attributes assess the chemical quality and shelf-life indicators: pH: Acidity/alkalinity of the curry. Acidity (%): Total titratable acidity to check for spoilage. Peroxide Value: Indicator of fat oxidation (measured in meq/kg). Microbial Load: Total Plate Count (TPC) measured in CFU/g to assess microbial contamination. 4. Classification Labels Each sample is labeled as either: Good (1): Samples that meet quality standards for appearance, texture, aroma, and taste, with acceptable physical and chemical properties. Bad (0): Samples with substandard sensory, physical, or chemical qualities, or those with microbial spoilage. Dataset Characteristics Size: 1000 samples (500 Good, 500 Bad). Balance: The dataset is balanced, ensuring equal representation of both classes. Format: Tabular format with rows representing individual samples and columns representing attributes and labels. Applications: The dataset can be used for training machine learning models, such as logistic regression, SVM, decision trees, or neural networks, to classify curry quality. Significance This dataset provides a comprehensive framework to understand the quality determinants of Cabbage and Potato Curry. The classification outcomes can help improve quality control processes and ensure consumer safety and satisfaction. This concise description remains within the 3000-character limit while covering all critical aspects of the dataset. Let me know if you'd like to add any specific details or adjust the focus!

Files

Categories

Biological Classification, Characterization of Food

Licence