Merge genetic_algorithms with final_show branch #28
23
App.py
23
App.py
@ -10,6 +10,7 @@ import Ui
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import BFS
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import AStar
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import neuralnetwork
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import json
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bfs1_flag=False
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@ -20,8 +21,9 @@ Astar2 = False
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if bfs3_flag or Astar or Astar2:
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Pole.stoneFlag = True
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TreeFlag=False
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nnFlag=True
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nnFlag=False
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newModel=False
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finalFlag = True
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pygame.init()
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show_console=True
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@ -43,7 +45,15 @@ def init_demo(): #Demo purpose
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old_info=""
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traktor.draw_tractor()
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time.sleep(2)
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pole.randomize_colors(nnFlag)
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if not finalFlag:
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pole.randomize_colors(nnFlag)
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else:
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population = 120
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iterat = 2500
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roulette = True
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with open(f'pole_pop{population}_iter{iterat}_{roulette}.json', 'r') as file:
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garden_data = json.load(file)
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pole.setPlantsByList(garden_data)
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traktor.draw_tractor()
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start_flag=True
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while True:
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@ -128,11 +138,16 @@ def init_demo(): #Demo purpose
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print_to_console("sieć nuronowa nauczona")
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print('model został wygenerowany')
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else:
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model = neuralnetwork.loadModel('model.pth')
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model = neuralnetwork.loadModel('model_500_hidden.pth')
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print_to_console("model został załądowny")
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testset = neuralnetwork.getDataset(False)
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print(neuralnetwork.accuracy(model, testset))
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traktor.snake_move_predict_plant(pole, model)
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traktor.snake_move_predict_plant(pole, model, headers=['Coords','Real plant','Predicted plant','Result','Fertilizer'], actions=[traktor.fertilize_slot])
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if(finalFlag):
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pass
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model = neuralnetwork.loadModel('model_500_hidden.pth')
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Tractor.drzewo.treeLearn()
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traktor.snake_move_predict_plant(pole, model, headers=['Coords','Real plant','Predicted plant','Result','Decision'], actions=[traktor.irigate_slot_NN])
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start_flag=False
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# demo_move()
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old_info=get_info(old_info)
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@ -8,7 +8,7 @@ class Drzewo:
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self.tree=self.treeLearn()
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def treeLearn(self):
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csvdata=pandas.read_csv('Data/dataTree.csv')
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csvdata=pandas.read_csv('Data/dataTree2.csv')
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#csvdata = pandas.read_csv('Data/dataTree2.csv')
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x=csvdata[atributes]
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decision=csvdata['action']
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22
Image.py
22
Image.py
@ -80,3 +80,25 @@ def getRandomImageFromDataBase():
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image = pygame.image.load(imgPath)
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image=pygame.transform.scale(image,(dCon.CUBE_SIZE,dCon.CUBE_SIZE))
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return image, label, imgPath
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def getSpedifiedImageFromDatabase(label):
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folderPath = f"dataset/test/{label}"
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files = os.listdir(folderPath)
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random_image = random.choice(files)
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imgPath = os.path.join(folderPath, random_image)
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while imgPath in imagePathList:
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for event in pygame.event.get():
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if event.type == pygame.QUIT:
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quit()
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label = random.choice(neuralnetwork.labels)
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folderPath = f"dataset/test/{label}"
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files = os.listdir(folderPath)
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random_image = random.choice(files)
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imgPath = os.path.join(folderPath, random_image)
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imagePathList.append(imgPath)
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image = pygame.image.load(imgPath)
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image=pygame.transform.scale(image,(dCon.CUBE_SIZE,dCon.CUBE_SIZE))
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return image, label, imgPath
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8
Pole.py
8
Pole.py
@ -62,6 +62,14 @@ class Pole:
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continue
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else:
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self.slot_dict[coordinates].set_random_plant(nn)
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def setPlantsByList(self, plantList):
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pygame.display.update()
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time.sleep(3)
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for coordinates in self.slot_dict:
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if(coordinates==(0,0)):
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continue
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else:
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self.slot_dict[coordinates].set_specifided_plant(plantList[coordinates[1]][coordinates[0]])
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def change_color_of_slot(self,coordinates,color): #Coordinates must be tuple (x,y) (left top slot has cord (0,0) ), color has to be from defined in Colors.py or custom in RGB value (R,G,B)
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self.get_slot_from_cord(coordinates).color_change(color)
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7
Slot.py
7
Slot.py
@ -50,6 +50,11 @@ class Slot:
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self.plant=Roslina.Roslina(self.label)
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self.set_image()
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def set_specifided_plant(self, plant):
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self.plant_image, self.label, self.imagePath = self.specified_plant_dataset(plant)
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self.plant=Roslina.Roslina(self.label)
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self.set_image()
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def set_image(self):
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if self.plant_image is None:
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self.plant_image = self.image_loader.return_random_plant()
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@ -75,6 +80,8 @@ class Slot:
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return self.image_loader.return_random_plant()
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def random_plant_dataset(self):
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return Image.getRandomImageFromDataBase()
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def specified_plant_dataset(self, plant):
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return Image.getSpedifiedImageFromDatabase(plant)
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def return_plant(self):
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return self.plant
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24
Tractor.py
24
Tractor.py
@ -30,6 +30,7 @@ class Tractor:
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DIRECTION_SOUTH = 'S'
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DIRECTION_WEST = 'W'
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DIRECTION_EAST = 'E'
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def __init__(self,slot,screen, osprzet,clock,bfs2_flag):
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self.tractor_images = {
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Tractor.DIRECTION_NORTH: pygame.transform.scale(pygame.image.load('images/traktorN.png'),
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@ -193,8 +194,7 @@ class Tractor:
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self.turn_left()
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print("podlanych slotów: ", str(counter))
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def snake_move_predict_plant(self, pole, model):
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headers=['Coords','Real plant','Predicted plant','Result','Fertilizer']
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def snake_move_predict_plant(self, pole, model, headers, actions = None):
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print(format_string_nn.format(*headers))
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initPos = (self.slot.x_axis, self.slot.y_axis)
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count = 0
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@ -207,9 +207,11 @@ class Tractor:
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predictedLabel = nn.predictLabel(self.slot.imagePath, model)
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#print(str("Coords: ({:02d}, {:02d})").format(self.slot.x_axis, self.slot.y_axis), "real:", self.slot.label, "predicted:", predictedLabel, "correct" if (self.slot.label == predictedLabel) else "incorrect", 'nawożę za pomocą:', nn.fertilizer[predictedLabel])
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print(format_string_nn.format(f"{self.slot.x_axis,self.slot.y_axis}",self.slot.label,predictedLabel,"correct" if (self.slot.label == predictedLabel) else "incorrect",nn.fertilizer[predictedLabel]))
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# print(format_string_nn.format(f"{self.slot.x_axis,self.slot.y_axis}",self.slot.label,predictedLabel,"correct" if (self.slot.label == predictedLabel) else "incorrect",nn.fertilizer[predictedLabel]))
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for a in actions:
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a(predictedLabel)
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if self.slot.label != predictedLabel:
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self.slot.mark_visited()
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# self.slot.mark_visited()
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count += 1
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self.move_forward(pole, False)
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if i % 2 == 0 and i != dCon.NUM_Y - 1:
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@ -220,7 +222,19 @@ class Tractor:
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self.turn_left()
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self.move_forward(pole, False)
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self.turn_left()
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print(f"Dobrze nawiezionych roślin: {20*12-count}, źle nawiezionych roślin: {count}")
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print(f"Dobrze rozpoznanych roślin: {20*12-count}, źle rozpoznanych roślin: {count}")
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def fertilize_slot(self, predictedLabel):
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print(format_string_nn.format(f"{self.slot.x_axis,self.slot.y_axis}",self.slot.label,predictedLabel,"correct" if (self.slot.label == predictedLabel) else "incorrect",nn.fertilizer[predictedLabel]))
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if self.slot.label != predictedLabel:
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self.slot.mark_visited()
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def irigate_slot_NN(self, predictedLabel):
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attributes=self.get_attributes()
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decision = drzewo.makeDecision(attributes)
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print(format_string_nn.format(f"{self.slot.x_axis,self.slot.y_axis}",self.slot.label,predictedLabel,"correct" if (self.slot.label == predictedLabel) else "incorrect",decision))
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condition.cycle()
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self.waterLevel = random.randint(0, 100)
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def snake_move(self,pole,x,y):
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next_slot_coordinates=(x,y)
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@ -77,7 +77,7 @@ def saveModel(model, path):
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def loadModel(path):
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print("Loading model")
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model = getModel()
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model.load_state_dict(torch.load(path))
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model.load_state_dict(torch.load(path, map_location=torch.device('cpu'))) # musiałem tutaj dodać to ładowanie z mapowaniem na cpu bo u mnie CUDA nie działa wy pewnie możecie to usunąć
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return model
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def trainNewModel(n_iter=100, batch_size=256):
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Block a user